<?xml version="1.0" encoding="UTF-8"?><!DOCTYPE article PUBLIC "-//NLM//DTD JATS (Z39.96) Journal Publishing DTD v1.2 20190208//EN" "http://jats.nlm.nih.gov/publishing/1.2/JATS-journalpublishing1.dtd"><article xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink" article-type="research-article" dtd-version="1.2" xml:lang="en">
    <front>
        <journal-meta>
            <journal-id journal-id-type="pmc">F1000Research</journal-id>
            <journal-title-group>
                <journal-title>F1000Research</journal-title>
            </journal-title-group>
            <issn pub-type="epub">2046-1402</issn>
            <publisher>
                <publisher-name>F1000 Research Limited</publisher-name>
                <publisher-loc>London, UK</publisher-loc>
            </publisher>
        </journal-meta>
        <article-meta>
            <article-id pub-id-type="doi">10.12688/f1000research.123849.4</article-id>
            <article-categories>
                <subj-group subj-group-type="heading">
                    <subject>Research Article</subject>
                </subj-group>
                <subj-group>
                    <subject>Articles</subject>
                </subj-group>
            </article-categories>
            <title-group>
                <article-title>Cointegration and causality relationship of Indian stock market with selected world markets</article-title>
                <fn-group content-type="pub-status">
                    <fn>
                        <p>[version 4; peer review: 2 approved]</p>
                    </fn>
                </fn-group>
            </title-group>
            <contrib-group>
                <contrib contrib-type="author" corresp="yes">
                    <name>
                        <surname>Ali</surname>
                        <given-names>Farman</given-names>
                    </name>
                    <role content-type="http://credit.niso.org/">Conceptualization</role>
                    <role content-type="http://credit.niso.org/">Investigation</role>
                    <role content-type="http://credit.niso.org/">Software</role>
                    <role content-type="http://credit.niso.org/">Visualization</role>
                    <role content-type="http://credit.niso.org/">Writing &#x2013; Original Draft Preparation</role>
                    <role content-type="http://credit.niso.org/">Writing &#x2013; Review &amp; Editing</role>
                    <uri content-type="orcid">https://orcid.org/0000-0002-3364-2355</uri>
                    <xref ref-type="corresp" rid="c1">a</xref>
                    <xref ref-type="aff" rid="a1">1</xref>
                </contrib>
                <contrib contrib-type="author" corresp="no">
                    <name>
                        <surname>Suri</surname>
                        <given-names>Pradeep</given-names>
                    </name>
                    <role content-type="http://credit.niso.org/">Supervision</role>
                    <role content-type="http://credit.niso.org/">Validation</role>
                    <xref ref-type="aff" rid="a1">1</xref>
                </contrib>
                <contrib contrib-type="author" corresp="no">
                    <name>
                        <surname>Kaur</surname>
                        <given-names>Tarunpreet</given-names>
                    </name>
                    <role content-type="http://credit.niso.org/">Formal Analysis</role>
                    <role content-type="http://credit.niso.org/">Methodology</role>
                    <role content-type="http://credit.niso.org/">Validation</role>
                    <xref ref-type="aff" rid="a1">1</xref>
                    <xref ref-type="aff" rid="a2">2</xref>
                </contrib>
                <contrib contrib-type="author" corresp="no">
                    <name>
                        <surname>Bisht</surname>
                        <given-names>Deepa</given-names>
                    </name>
                    <role content-type="http://credit.niso.org/">Data Curation</role>
                    <role content-type="http://credit.niso.org/">Investigation</role>
                    <role content-type="http://credit.niso.org/">Writing &#x2013; Review &amp; Editing</role>
                    <xref ref-type="aff" rid="a1">1</xref>
                    <xref ref-type="aff" rid="a3">3</xref>
                </contrib>
                <aff id="a1">
                    <label>1</label>Department of Management, Uttaranchal University, Dehradun, Uttarakhand, 248001, India</aff>
                <aff id="a2">
                    <label>2</label>University of Petroleum and Energy Studies, Dehradun, Uttarakhand, India</aff>
                <aff id="a3">
                    <label>3</label>Directorate of Higher Education, Uttarakhand, India</aff>
            </contrib-group>
            <author-notes>
                <corresp id="c1">
                    <label>a</label>
                    <email xlink:href="mailto:farmanali@uumail.in">farmanali@uumail.in</email>
                </corresp>
                <fn fn-type="conflict">
                    <p>No competing interests were disclosed.</p>
                </fn>
            </author-notes>
            <pub-date pub-type="epub">
                <day>13</day>
                <month>8</month>
                <year>2024</year>
            </pub-date>
            <pub-date pub-type="collection">
                <year>2022</year>
            </pub-date>
            <volume>11</volume>
            <elocation-id>1241</elocation-id>
            <history>
                <date date-type="accepted">
                    <day>24</day>
                    <month>7</month>
                    <year>2024</year>
                </date>
            </history>
            <permissions>
                <copyright-statement>Copyright: &#x00a9; 2024 Ali F et al.</copyright-statement>
                <copyright-year>2024</copyright-year>
                <license xlink:href="https://creativecommons.org/licenses/by/4.0/">
                    <license-p>This is an open access article distributed under the terms of the Creative Commons Attribution Licence, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.</license-p>
                </license>
            </permissions>
            <self-uri content-type="pdf" xlink:href="https://f1000research.com/articles/11-1241/pdf"/>
            <abstract>
                <p>
                    <bold>Background:</bold> The purpose of this study is to explore the trends and causes of established and emerging nations&#x2019; stock market integration with India. The National Stock Exchange (NSE) indices act as a counterweight to international market indices.</p>
                <p> This study investigates the sustained interest of foreign investors in the Indian stock market in the wake of capital market reforms, as well as whether it moves in tandem with other markets in Asia and the United States.</p>
                <p>
                    <bold>Methods:</bold> Our study examined the possibility of cross-country cointegration between the largest economies and indices around the world using multiple financial econometric models, such as Augmented Dickey-Fuller, Unit Root, Correlation, and Johansen Cointegration.</p>
                <p>
                    <bold>Results:</bold> The findings of this study significantly support the notion that Indian and international financial markets are highly integrated. Vector error correction model indicates that the Indian market (NSE) is highly cointegrated with the US market (National Association of Securities Dealers Automated Quotations) and increased volatility signifies global contagion.</p>
                <p>
                    <bold>Conclusion:</bold> A cursory examination of the data reveals distinct investment and portfolio diversification options for global investors. This could assist regulators in formulating more effective rules regarding price discovery processes.</p>
            </abstract>
            <kwd-group kwd-group-type="author">
                <kwd>Stock market</kwd>
                <kwd>Investors</kwd>
                <kwd>Volatility</kwd>
                <kwd>Global market</kwd>
                <kwd>Unit root test</kwd>
                <kwd>VECM</kwd>
                <kwd>Johansen cointegration test</kwd>
            </kwd-group>
            <funding-group>
                <funding-statement>The author(s) declared that no grants were involved in supporting this work.</funding-statement>
            </funding-group>
        </article-meta>
        <notes>
            <sec sec-type="version-changes">
                <label>Revised</label>
                <title>Amendments from Version 3</title>
                <p>We have addressed all comments and made the necessary revisions to ensure the manuscript meets the high standards of your esteemed journal. We are confident that the final version of the manuscript reflects the valuable feedback provided by the reviewers and is now ready for publication. The changes are as follows:&#x00a0;&#x00a0; 1.The error correction term has been added though the separate table is also provided. 2.The level of the unit root test has been revised.&#x00a0;&#x00a0; 3.The diagnostics have been conducted at the same lag. 4.The study has used the variance decomposition to validates the findings to the extent of cointegration.</p>
            </sec>
        </notes>
    </front>
    <body>
        <sec id="sec1" sec-type="intro">
            <title>1. Introduction</title>
            <p>Global stock market connections have been studied extensively. However, there has not been a great deal of academic interest in examining the interdependence of Emerging stock markets. An economic spillier occurs when one event sets off another event in a similar way, having an impact on economies both within and outside a country. In 2008, when Lehman Brothers collapsed in the U. S., the domino effect hit the economies worldwide including India (
                <xref ref-type="bibr" rid="ref6">Aloui 
                    <italic toggle="yes">et al.</italic>, 2016</xref>). Financial markets today are closely interconnected and driven by trust. Therefore, the developed and emerging markets have been a riveting field for the research of behavioural finance due to interlinked stock markets across the world. 
                <xref ref-type="bibr" rid="ref39">Lai 
                    <italic toggle="yes">et al.</italic> (2016)</xref> examined during the crisis, investors make errors of judgment as long as a group of investors takes irrational decisions that lead to worsening the situation of the stock market.</p>
            <p>COVID-19 also delivered a shock to the economies of most countries, because of the nature of the interconnected global market (
                <xref ref-type="bibr" rid="ref33">Karkowska and Urjasz, 2021</xref>). The Indian stock market has been broadly resilient amidst the COVID-19 crisis so far, despite the devastating waves of the pandemic (
                <xref ref-type="bibr" rid="ref32">Kapoor 
                    <italic toggle="yes">et al.</italic>, 2020</xref>). However, the Indian economy has witnessed some impact from the global crash. 
                <xref ref-type="bibr" rid="ref58">Seth and Panda (2020)</xref> discussed that it is hard to pinpoint exactly the impact of any financial crisis on the Indian stock market, but it seems that the COVID-19 crisis has spilled over into some sectors. Numerous studies (
                <xref ref-type="bibr" rid="ref59">Shaikh, 2021</xref>; 
                <xref ref-type="bibr" rid="ref18">Dhall and Singh, 2020</xref>; 
                <xref ref-type="bibr" rid="ref62">Singh and Neog, 2020</xref>) have argued on insignificant causal linkage of the stock markets across the world. Some authors such as 
                <xref ref-type="bibr" rid="ref70">Zhang and Hamori (2021)</xref>, have also focused on the possible factors and impacts of the global crisis on the Indian market. 
                <xref ref-type="bibr" rid="ref77">Hoque 
                    <italic toggle="yes">et al.</italic> (2007)</xref> investigated the co-movement of the Bangladesh market with those of Japan, the United States, and India and discovered evidence of a shared stochastic trend. In his paper, it was clear that shocks in the US affected Bangladesh, which is an emerging country. 
                <xref ref-type="bibr" rid="ref55">Rajwani and Mukherjee (2013)</xref> examined the interconnectedness of the Indian stock market with other Asian stock markets and discovered that the Indian stock market is not interconnected with any of the Asian stock markets, demonstrating the insensitivity of the Indian stock markets to other markets. Several studies have identified both short-term and long-term cointegration and interconnected financial markets between different economies of the world (
                <xref ref-type="bibr" rid="ref64">Stawiarski, 2021</xref>;
                <xref ref-type="bibr" rid="ref69">Yarovaya and Lau, 2016</xref>). The global financial markets are closely interconnected and driven by the emotions of the investors (
                <xref ref-type="bibr" rid="ref30">Huang 
                    <italic toggle="yes">et al.,</italic> 2020</xref>). Hence, this manuscript focuses a causal linkage and cointegration between the global crisis and the Indian stock. In previous studies such as 
                <xref ref-type="bibr" rid="ref47">Mukherjee and Bose (2008) </xref>and 
                <xref ref-type="bibr" rid="ref55">Rajwani and Mukherjee (2013)</xref>, Asian economies have been integrated with the economies of developed nations such as Japan and the United States.</p>
            <p>In this study, we contribute to the literature on strategic financial decision-making for investors. Using vector auto regressive correlation (VAR) and vector error correction method (VECM) to assess the cointegration (
                <xref ref-type="bibr" rid="ref69">Yarovaya and Lau, 2016</xref>; 
                <xref ref-type="bibr" rid="ref31">Kanjilal and Ghosh, 2017</xref>; 
                <xref ref-type="bibr" rid="ref2">Aggarwal and Raja, 2019</xref>), have documented the multivariate cointegration-vector auto-regression method and their results indicate that the Indian stock market return depends on the world market returns. This study&#x2019;s main objective is to comprehend how the volatility index of the Indian stock market might be impacted by the volatility index of some other countries. The Indian Capital Market has been examined by various academics at various times for its efficiency and co-integration. Utilizing the Engle-Granger test of co-integration, this study examines the co-integration characteristics of the Indian Capital Market with global markets in the post-liberalization period. Since there are so many markets and so much trade, no amount of research can adequately explain the behaviour. Indian capital markets and other capital markets around the world are investigated in this study.</p>
            <p>Accordingly, the article is organized as follows: Section 2 summarizes existing studies that have used cointegration tests on the stock market. Section 3 describes the technique used in the article. Section 4 goes over the data, including possible structural breaks. Section 5 displays the cointegration test findings. Section 6 explores the ramifications of the findings, and Section 6 concludes.</p>
        </sec>
        <sec id="sec2">
            <title>2. Literature review</title>
            <p>A series of recent studies (
                <xref ref-type="bibr" rid="ref15">Choudhary and Singhal, 2020</xref>; 
                <xref ref-type="bibr" rid="ref37">Kumar 
                    <italic toggle="yes">et al.</italic>, 2021</xref>; 
                <xref ref-type="bibr" rid="ref56">Sahoo and Kumar, 2021</xref>; 
                <xref ref-type="bibr" rid="ref34">Kartal 
                    <italic toggle="yes">et al</italic>., 2022</xref>) has investigated the cointegration relationship of the stock market amid crisis. Some studies (
                <xref ref-type="bibr" rid="ref29">He 
                    <italic toggle="yes">et al</italic>., 2020</xref>; 
                <xref ref-type="bibr" rid="ref64">Stawiarski, 2021</xref>) have explained the causal linkage of Indian stock market with Asian countries while in some other studies, a number of authors have recognized the comprehensive analysis by applying Generalized Autoregressive Conditional Heteroskedasticity Model (
                <xref ref-type="bibr" rid="ref51">Narasimha and Mushinada, 2020</xref>) and found very high volatility index of Indian stock market in comparison to developed countries during the COVID-19 crisis. While recent advances in the field of behavioural finance have highlighted the volatility clustering in the Indian stock market through the use of time series data analysis and predictive analytics. According to 
                <xref ref-type="bibr" rid="ref35">Khaing 
                    <italic toggle="yes">et al.</italic> (2020)</xref>, stock trend extraction results matched genuine price movement. These patterns were retrieved with the news effect curve during the global recession 2008-2009. These criteria include timestamp conversion, identifying the necessary verb, stock reference, and identifying advanced trends. 
                <xref ref-type="bibr" rid="ref13">Chen (2021)</xref> created the new neural network model to develop the prediction model&#x2019;s concepts. 
                <xref ref-type="bibr" rid="ref7">Belciug 
                    <italic toggle="yes">et al.</italic> (2021)</xref> evaluated the efficacy of a statistical learning framework using an algorithm based on a competitive/collaborative method for generating a reliable real-time forecast of the next stock market transaction price for a share during upswing of the market. 
                <xref ref-type="bibr" rid="ref9">Biswas 
                    <italic toggle="yes">et al.</italic> (2021)</xref> reviewed numerous models and approaches used in stock market prediction and focused on their advantages and disadvantages during the crisis. Numerous studies have argued that there is insignificant (
                <xref ref-type="bibr" rid="ref26">Goudarzi and Ramanarayanan, 2011</xref>) and significant (
                <xref ref-type="bibr" rid="ref2">Aggarwal and Raja, 2019</xref>) causal linkage among the stock markets across the world. Some scholars, such as 
                <xref ref-type="bibr" rid="ref82">Jain and Biswal (2016)</xref>, have also focused on the possible drivers of rupee value decline and the influence of the 2014-2015 global crisis on the Indian stock market. It is well established that the global financial markets are closely interconnected 
                <xref ref-type="bibr" rid="ref48">Muthukumaran 
                    <italic toggle="yes">et al.</italic> (2011)</xref> and are driven by the emotions of investors. Several studies have identified interconnected financial markets between different economies of the world during1996-1997 crisis 
                <xref ref-type="bibr" rid="ref68">Yang 
                    <italic toggle="yes">et al.</italic> (2003)</xref> by applying VAR (vector auto-regression). There is a strong co-movement between developing and mature markets, and studies have found a larger correlation among well-established equities markets (
                <xref ref-type="bibr" rid="ref72">Bekaert and Harvey, 2003</xref>; 
                <xref ref-type="bibr" rid="ref74">Carrieri 
                    <italic toggle="yes">et al.</italic>, 2007</xref>). On the other hand, some early literature implies the existence of diversification benefits by investing in both developed and developing economies due to relatively lower correlations between stock markets of such economies (
                <xref ref-type="bibr" rid="ref73">Bekaert and Harvey, 1995</xref>; 
                <xref ref-type="bibr" rid="ref76">Foerster and Karolyi, 1999</xref>). Different experts have come to different conclusions about how stock markets around the world are related to each other. In addition, the relationship between global stock markets is temporally variable; national and global events can alter the nature and intensity of a relationship over time. Depending on its intensity, the phenomenon could last a short time or last for a very long time. Globalization has changed the relationship between various financial markets worldwide (
                <xref ref-type="bibr" rid="ref75">Can Inci 
                    <italic toggle="yes">et al.</italic>, 2011</xref>). 
                <xref ref-type="bibr" rid="ref3">Ahmad 
                    <italic toggle="yes">et al.</italic> (2005)</xref> have investigated only short term linkage whilst no significant linkage was found among the Indian Stock Market (NSE), Japanese (Nikkei) and US equity market (Dow Jones) amid crisis by using Granger-causality test. 
                <xref ref-type="bibr" rid="ref46">Menon 
                    <italic toggle="yes">et al.</italic> (2009)</xref> found that the Indian stock market did not have any causal linkage with the US and Japanese stock markets during the 2008 crisis period by hypothesizing Engle Granger test of co-integration. 
                <xref ref-type="bibr" rid="ref61">Siddiqui (2009)</xref> concluded that the Indian stock market is integrated with the global market. Some others studies such as 
                <xref ref-type="bibr" rid="ref55">Rajwani and Mukherjee (2013)</xref> have argued the Indian stock market is not interconnected with the Asian markets. 
                <xref ref-type="bibr" rid="ref52">Narayan 
                    <italic toggle="yes">et al.</italic> (2014)</xref> have investigated highly positive time varying bilateral correlations by analysing GARCH-dynamic conditional correlations.</p>
            <p>
                <xref ref-type="bibr" rid="ref69">Yarovaya and Lau (2016)</xref> have concluded the asymmetric causality linkage; their results indicating the coupling and decoupling of the Chinese stock market with the UK stock market. 
                <xref ref-type="bibr" rid="ref53">Nayak 
                    <italic toggle="yes">et al</italic>. (2016)</xref> applied machine learning algorithms and identified that the historical prices of the stocks are combined with sentiments of the investors. 
                <xref ref-type="bibr" rid="ref50">Nandy and Chattopadhyay (2019)</xref> have explained the unidirectional action from the world&#x2019;s stock exchange indices over Indian stock market indices by carrying multivariate vector auto regression (VAR) analysis and Granger causality test. 
                <xref ref-type="bibr" rid="ref2">Aggarwal and Raja (2019)</xref> explored a long-run cointegration equation of the Asian and the Indian market by applying the Johansen cointegration model. Some other studies have also confirmed the bidirectional causality of Bombay Stock exchange indices with the US stock market indices by carrying Granger causality test (
                <xref ref-type="bibr" rid="ref15">Choudhary and Singhal, 2020</xref>). 
                <xref ref-type="bibr" rid="ref58">Seth and Panda (2020)</xref> have revealed the strong dynamic linkage between the global economies and Indian economy by analysing the Autoregressive (AR1), Generalized Auto Regressive Conditional Heteroskedasticity (GARCH 1,1) Model and Asymmetric Dynamic Conditional Correlation (ADCC) model to determine the coupling and decoupling. Apart from analysing only the degree of cointegration and contagion among the world market, several studies have hypothesized the global contagion on the volatility of Indian stock&#x2019;s prices. 
                <xref ref-type="bibr" rid="ref40">Li 
                    <italic toggle="yes">et al.</italic> (2011)</xref> have confirmed that the GARCH model cannot completely account for all nonlinearity in simulated market amid global crisis. 
                <xref ref-type="bibr" rid="ref26">Goudarzi and Ramanarayanan (2011)</xref> have revealed the bilateral causality between the Bombay Stock Exchange and foreign institutional investors. 
                <xref ref-type="bibr" rid="ref25">Garg and Gulati (2013)</xref> examined the rationality of the Indian investors in the face of economic crisis and validated the use of rational pricing models. 
                <xref ref-type="bibr" rid="ref19">Ding 
                    <italic toggle="yes">et al</italic>. (2014)</xref> have indicated returns depend on the direction of the movement of buying and selling pattern and stock distinctiveness of individual holdings and on arbitrage constraint. 
                <xref ref-type="bibr" rid="ref27">Guyon (2014)</xref> suggested the models of path-dependent volatility provide excellent alternatives to the duopoly of local volatility and stochastic volatility that has dominated option pricing for the past twenty years.</p>
            <p>The fractal structure has been studied by 
                <xref ref-type="bibr" rid="ref44">Mahalingam and Selvam (2014)</xref> with long term returns on the market. An adaptive multiplicative error model (MEM) with time-varying parameters was proposed by 
                <xref ref-type="bibr" rid="ref28">H&#x00e4;rdle 
                    <italic toggle="yes">et al.</italic> (2015)</xref>. A multiplicative error model (MEM) parameters are adaptively estimated through sequential testing. 
                <xref ref-type="bibr" rid="ref8">Bir 
                    <italic toggle="yes">et al</italic>. (2015)</xref> have investigated the highest volatility for open ended stocks in the Indian stock market. 
                <xref ref-type="bibr" rid="ref38">Kumari and Mahakud (2016)</xref> have explored the unidirectional causality between sentiment and stock market volatility. This study indicated that the market reacts more strongly to the impact or shock of negative or bearish mood than to positive or bullish sentiment. 
                <xref ref-type="bibr" rid="ref11">Bouri 
                    <italic toggle="yes">et al.</italic> (2017)</xref> have examined significant hypothesis about the existence of cointegration linkage and nonlinear volatilities of oil and gold in Indian stock market during the crisis. 
                <xref ref-type="bibr" rid="ref1">Abuzayed 
                    <italic toggle="yes">et al</italic>. (2018)</xref> demonstrated that the skewed Student-t FIGARCH (Fractionally integrated generalized autoregressive conditional Heteroscedasticity) model generates the most precise VAR forecast for a single day. Other studies have demonstrated the ripple effects of United States of America uncertainty on other developed markets, such as L. 
                <xref ref-type="bibr" rid="ref23">Fang 
                    <italic toggle="yes">et al.</italic> (2018)</xref>. 
                <xref ref-type="bibr" rid="ref10">Boako and Alagidede (2018)</xref> have confirmed the correlation amongst African stock markets, regional and global markets by carrying a comprehensive analysis. 
                <xref ref-type="bibr" rid="ref16">Chuli&#x00e1; 
                    <italic toggle="yes">et al</italic>. (2018)</xref> have demonstrated that some crises have had a weak negative correlation with market synchrony. 
                <xref ref-type="bibr" rid="ref66">Wang 
                    <italic toggle="yes">et al</italic>. (2019)</xref> have confirmed that significant shocks have a substantial link with stock prices and assert that volatility is more susceptible to the asymmetric effect than extreme volatility. According to 
                <xref ref-type="bibr" rid="ref67">Xing and Yang (2019)</xref>, firms that attract more individual investors provide higher returns with lower future stock price crash risk. It is widely accepted that a greater degree of correlation among stocks provides an early warning of the probability of crashes. It has been conclusively shown that herding is strongly evident during the fluctuations of market (
                <xref ref-type="bibr" rid="ref60">Shantha, 2019</xref>).</p>
            <p>Some studies such as 
                <xref ref-type="bibr" rid="ref24">Fang 
                    <italic toggle="yes">et al</italic>. (2020)</xref>; 
                <xref ref-type="bibr" rid="ref78">Wong 
                    <italic toggle="yes">et al.</italic> (2005)</xref>; 
                <xref ref-type="bibr" rid="ref79">Daly (2003)</xref> also identified that the long-term volatility of the stock market depends upon many macroeconomic variables. While 
                <xref ref-type="bibr" rid="ref42">Ly&#x00f3;csa and Moln&#x00e1;r (2020)</xref> discovered that the autoregressive coefficient was negative during COVID-19 (November 2019 to May 2020), they also discovered that uncertainty in the stock market and fear of viruses significantly influenced the breath of the autoregressive coefficient during the COVID-19 crisis. 
                <xref ref-type="bibr" rid="ref51">Narasimha and Mushinada (2020)</xref> point out that investors are concerned about cognitive biases and therefore adapt to changing market dynamics. (
                <xref ref-type="bibr" rid="ref65">Vo, 2020</xref>) studied the significant positive link between foreign investors and crash risk due to the asymmetry of information in the emerging market. Among BRICS (Brazil, Russia, India, China, and South Africa) a diverse responses to the stock market volatility reported including negative and positive shocks (
                <xref ref-type="bibr" rid="ref57">Salisu and Gupta, 2020</xref>). 
                <xref ref-type="bibr" rid="ref17">Cui and Zhang (2020)</xref> have suggested that negative information creates fear among the investor which leads to a larger stock price crash risk. According to 
                <xref ref-type="bibr" rid="ref54">Nikkinen and Peltom&#x00e4;ki (2020)</xref>, investors&#x2019; crash worries are examined by using published newspaper articles and web search volumes. They examine how information supply and demand relate to investor anxiety and their effects on stock market returns, implying that media contribute to the efficiency of information transmission. 
                <xref ref-type="bibr" rid="ref29">He 
                    <italic toggle="yes">et al.</italic> (2020)</xref> have examined the futures markets ability to price discover by margin trading on the stock market. 
                <xref ref-type="bibr" rid="ref36">Kumar and Misra (2020)</xref> have found widespread evidence of long-term similarity among the NIFTY 50 index and the global market. 
                <xref ref-type="bibr" rid="ref49">Naik 
                    <italic toggle="yes">et al</italic>. (2020)</xref> used GARCH (Generalized Auto-Regressive Conditional Heteroskedasticity) to calculate stock return error distribution. When time series data are heteroskedastic and volatile, the GARCH model is best. GARCH effectively predicted stock market crises (1995-2019) using State Bank of India and Infosys datasets. 
                <xref ref-type="bibr" rid="ref20">Elyasiani 
                    <italic toggle="yes">et al</italic>. (2021)</xref> analysed market greed by including the skewness index, which measures investor enthusiasm as opposed to investor fear. Previous studies have mainly exclusively explored the integration of Asian economies with other developed nations such as the United States and Japan during the period from 3
                <sup>rd</sup> January 2011 to 29
                <sup>th</sup> December 2017 in the midst of a global financial crisis. According to the literature, during the COVID-19 crisis, domino effects had both short-term and long-term negative consequences on economies all around the world (
                <xref ref-type="bibr" rid="ref57">Salisu and Gupta, 2020</xref>).</p>
            <p>However, there is a contradiction in the argument made by 
                <xref ref-type="bibr" rid="ref2">Aggarwal and Raja (2019)</xref>; 
                <xref ref-type="bibr" rid="ref55">Rajwani and Mukherjee (2013)</xref> and 
                <xref ref-type="bibr" rid="ref46">Menon 
                    <italic toggle="yes">et al.</italic> (2009)</xref>. Long-term cointegration of stock markets was not discovered, but correlation analysis revealed that stock market integration was growing with time.</p>
            <p>Even though the majority of the COVID-19 economic crisis has passed, further research is still needed on the developed and rising Asian markets. In addition, it would be interesting to know whether the effect of the crisis on the Indian stock market persists over time and, if so, for how long. Do the recent shocks to global markets alter the standard deviation of forecasting errors in the Indian stock market? Contributing to existing theory and strategic financial decision-making for investors, this paper offers valuable insights. In particular, the authors explore how the global volatility index&#x2019;s shock influences the Indian volatility index, how long the impact lasts, and the degree and sign of the effect.</p>
        </sec>
        <sec id="sec3" sec-type="methods">
            <title>3. Methods</title>
            <p>In our study, we examined data from several major indices, including the NSE in India, the NIKKEI (Japan&#x2019;s Nikkei 225 Stock Average) in Japan, NASDAQ (National Association of Securities Dealers Automated Quotations), DJI (Dow Jones Industrial Average) and S&amp;P (Standard and Poor index) in the United States, the FTSE (Financial Times Stock Exchange) in the UK, the DAX (Deutscher Aktien Index) in Germany, the FTXIN (FTSE&#x2013;Xinhua China A50 Index) in China, Cotation Assist&#x00e9;e en Continu (CAC) benchmark of France stock market and the Hang Seng in Hong Kong. The descriptive statistics for all indexes&#x2019; returns are shown in 
                <xref ref-type="table" rid="T3">Table 3</xref>. We compiled and collected the data from different websites (including 
                <ext-link ext-link-type="uri" xlink:href="https://finance.yahoo.com/">Yahoo</ext-link>, 
                <ext-link ext-link-type="uri" xlink:href="https://www.investing.com/">Investing.com</ext-link> and 
                <ext-link ext-link-type="uri" xlink:href="https://www.nseindia.com/">NSE India</ext-link>) over the long-term, encompassing a significant portion of the recession from January 1, 2008, to December 2, 2021. The time period covered by the research has been selected to provide an in-depth look at the worldwide correlations that have an effect on the Indian stock market over the long term. Although the trading hours of each stock exchange varies, the time frame is the exact same for all indexes. Therefore, in order to examine the group statistics, we have taken the common sample. We calculated the daily return by applying the [Return=log (Closing price of indices/Closing price of indices (-1))] equation over the closing price. We analysed the data using the EViews 12 (University Version) software package. The Johansen cointegration test (
                <xref ref-type="bibr" rid="ref46">Menon 
                    <italic toggle="yes">et al</italic>., 2009</xref>)
                <xref ref-type="fn" rid="fn1">
                    <sup>1</sup>
                </xref> is used to demonstrate a long-term link between variables. To determine short-term and long-term associations between variables, the vector error correction model was utilised followed by 
                <xref ref-type="bibr" rid="ref22">Ezeibekwe (2021)</xref>.</p>
            <sec id="sec4">
                <title>Hypothesis</title>
                <p>
                    <italic toggle="yes">H0: There is no long-term linear interdependency between the NSE index and the global index.</italic>
                </p>
                <p>
                    <italic toggle="yes">H1: There is a long-term linear interdependency between the NSE index and the global index.</italic>
                </p>
            </sec>
            <sec id="sec5">
                <title>Vector error correction model</title>
                <p>This model is adopted when variables are cointegrated. VAR indicates the cointegration of the variables over the short term. In addition, by incorporating error correction terms, the model examines the long-term causal relationship (
                    <xref ref-type="bibr" rid="ref83">Golder 
                        <italic toggle="yes">et al.</italic>, 2020</xref>). The number of variables can be measured by using the equations below. The vector autoregressive model of order 1 is called VAR (1):
                    <disp-formula id="e1">
                        <mml:math display="block">
                            <mml:msub>
                                <mml:mi>x</mml:mi>
                                <mml:mrow>
                                    <mml:mi>t</mml:mi>
                                    <mml:mo>,</mml:mo>
                                    <mml:mn>1</mml:mn>
                                </mml:mrow>
                            </mml:msub>
                            <mml:mo>=</mml:mo>
                            <mml:msub>
                                <mml:mi>&#x03b1;</mml:mi>
                                <mml:mn>1</mml:mn>
                            </mml:msub>
                            <mml:mo>+</mml:mo>
                            <mml:msub>
                                <mml:mi>&#x03d5;</mml:mi>
                                <mml:mn>11</mml:mn>
                            </mml:msub>
                            <mml:msub>
                                <mml:mi>x</mml:mi>
                                <mml:mrow>
                                    <mml:mi>t</mml:mi>
                                    <mml:mo>&#x2212;</mml:mo>
                                    <mml:mn>1</mml:mn>
                                    <mml:mo>,</mml:mo>
                                    <mml:mn>1</mml:mn>
                                </mml:mrow>
                            </mml:msub>
                            <mml:mo>+</mml:mo>
                            <mml:msub>
                                <mml:mi>&#x03d5;</mml:mi>
                                <mml:mn>12</mml:mn>
                            </mml:msub>
                            <mml:msub>
                                <mml:mi>x</mml:mi>
                                <mml:mrow>
                                    <mml:mi>t</mml:mi>
                                    <mml:mo>&#x2212;</mml:mo>
                                    <mml:mn>1</mml:mn>
                                    <mml:mo>,</mml:mo>
                                    <mml:mn>2</mml:mn>
                                </mml:mrow>
                            </mml:msub>
                            <mml:mo>+</mml:mo>
                            <mml:msub>
                                <mml:mi>&#x03d5;</mml:mi>
                                <mml:mn>13</mml:mn>
                            </mml:msub>
                            <mml:msub>
                                <mml:mi>x</mml:mi>
                                <mml:mrow>
                                    <mml:mi>t</mml:mi>
                                    <mml:mo>&#x2212;</mml:mo>
                                    <mml:mn>1</mml:mn>
                                    <mml:mo>,</mml:mo>
                                    <mml:mn>3</mml:mn>
                                </mml:mrow>
                            </mml:msub>
                            <mml:mo>+</mml:mo>
                            <mml:msub>
                                <mml:mi>w</mml:mi>
                                <mml:mrow>
                                    <mml:mi>t</mml:mi>
                                    <mml:mo>,</mml:mo>
                                    <mml:mn>1</mml:mn>
                                </mml:mrow>
                            </mml:msub>
                        </mml:math>
                        <label>(1)</label>
                    </disp-formula>
                    <disp-formula id="e2">
                        <mml:math display="block">
                            <mml:msub>
                                <mml:mi>x</mml:mi>
                                <mml:mrow>
                                    <mml:mi>t</mml:mi>
                                    <mml:mo>,</mml:mo>
                                    <mml:mn>2</mml:mn>
                                </mml:mrow>
                            </mml:msub>
                            <mml:mo>=</mml:mo>
                            <mml:msub>
                                <mml:mi>&#x03b1;</mml:mi>
                                <mml:mn>2</mml:mn>
                            </mml:msub>
                            <mml:mo>+</mml:mo>
                            <mml:msub>
                                <mml:mi>&#x03d5;</mml:mi>
                                <mml:mn>21</mml:mn>
                            </mml:msub>
                            <mml:msub>
                                <mml:mi>x</mml:mi>
                                <mml:mrow>
                                    <mml:mi>t</mml:mi>
                                    <mml:mo>&#x2212;</mml:mo>
                                    <mml:mn>1</mml:mn>
                                    <mml:mo>,</mml:mo>
                                    <mml:mn>1</mml:mn>
                                </mml:mrow>
                            </mml:msub>
                            <mml:mo>+</mml:mo>
                            <mml:msub>
                                <mml:mi>&#x03d5;</mml:mi>
                                <mml:mn>22</mml:mn>
                            </mml:msub>
                            <mml:msub>
                                <mml:mi>x</mml:mi>
                                <mml:mrow>
                                    <mml:mi>t</mml:mi>
                                    <mml:mo>&#x2212;</mml:mo>
                                    <mml:mn>1</mml:mn>
                                    <mml:mo>,</mml:mo>
                                    <mml:mn>2</mml:mn>
                                </mml:mrow>
                            </mml:msub>
                            <mml:mo>+</mml:mo>
                            <mml:msub>
                                <mml:mi>&#x03d5;</mml:mi>
                                <mml:mn>23</mml:mn>
                            </mml:msub>
                            <mml:msub>
                                <mml:mi>x</mml:mi>
                                <mml:mrow>
                                    <mml:mi>t</mml:mi>
                                    <mml:mo>&#x2212;</mml:mo>
                                    <mml:mn>1</mml:mn>
                                    <mml:mo>,</mml:mo>
                                    <mml:mn>3</mml:mn>
                                </mml:mrow>
                            </mml:msub>
                            <mml:mo>+</mml:mo>
                            <mml:msub>
                                <mml:mi>w</mml:mi>
                                <mml:mrow>
                                    <mml:mi>t</mml:mi>
                                    <mml:mo>,</mml:mo>
                                    <mml:mn>2</mml:mn>
                                </mml:mrow>
                            </mml:msub>
                            <mml:mspace width="0.25em"/>
                        </mml:math>
                        <label>(2)</label>
                    </disp-formula>
                    <disp-formula id="e3">
                        <mml:math display="block">
                            <mml:msub>
                                <mml:mi>x</mml:mi>
                                <mml:mrow>
                                    <mml:mi>t</mml:mi>
                                    <mml:mo>,</mml:mo>
                                    <mml:mn>3</mml:mn>
                                </mml:mrow>
                            </mml:msub>
                            <mml:mo>=</mml:mo>
                            <mml:msub>
                                <mml:mi>&#x03b1;</mml:mi>
                                <mml:mn>3</mml:mn>
                            </mml:msub>
                            <mml:mo>+</mml:mo>
                            <mml:msub>
                                <mml:mi>&#x03d5;</mml:mi>
                                <mml:mn>31</mml:mn>
                            </mml:msub>
                            <mml:msub>
                                <mml:mi>x</mml:mi>
                                <mml:mrow>
                                    <mml:mi>t</mml:mi>
                                    <mml:mo>&#x2212;</mml:mo>
                                    <mml:mn>1</mml:mn>
                                    <mml:mo>,</mml:mo>
                                    <mml:mn>1</mml:mn>
                                </mml:mrow>
                            </mml:msub>
                            <mml:mo>+</mml:mo>
                            <mml:msub>
                                <mml:mi>&#x03d5;</mml:mi>
                                <mml:mn>32</mml:mn>
                            </mml:msub>
                            <mml:msub>
                                <mml:mi>x</mml:mi>
                                <mml:mrow>
                                    <mml:mi>t</mml:mi>
                                    <mml:mo>&#x2212;</mml:mo>
                                    <mml:mn>1</mml:mn>
                                    <mml:mo>,</mml:mo>
                                    <mml:mn>2</mml:mn>
                                </mml:mrow>
                            </mml:msub>
                            <mml:mo>+</mml:mo>
                            <mml:msub>
                                <mml:mi>&#x03d5;</mml:mi>
                                <mml:mn>33</mml:mn>
                            </mml:msub>
                            <mml:msub>
                                <mml:mi>x</mml:mi>
                                <mml:mrow>
                                    <mml:mi>t</mml:mi>
                                    <mml:mo>&#x2212;</mml:mo>
                                    <mml:mn>1</mml:mn>
                                    <mml:mo>,</mml:mo>
                                    <mml:mn>3</mml:mn>
                                </mml:mrow>
                            </mml:msub>
                            <mml:mo>+</mml:mo>
                            <mml:msub>
                                <mml:mi>w</mml:mi>
                                <mml:mrow>
                                    <mml:mi>t</mml:mi>
                                    <mml:mo>,</mml:mo>
                                    <mml:mn>3</mml:mn>
                                </mml:mrow>
                            </mml:msub>
                        </mml:math>
                        <label>(3)</label>
                    </disp-formula>
                </p>
                <p>Engle-Granger model is used to measure (
                    <xref ref-type="bibr" rid="ref64">Stawiarski, 2021</xref>) cointegration between the indices from the NSE and global indices such as Japan (NIKKEI), U.S. (NASDAQ, DJI, and S&amp;P), UK (FTSE), Germany (DAX), China (FTXIN), Hong Kong (HANG SENG) and France (CAC). In 1981, Granger introduced the concept of cointegrated multivariate time series to demonstrate linear combinations of stationary variables imply that there is a long-term relationship (
                    <xref ref-type="bibr" rid="ref21">Engle 
                        <italic toggle="yes">et al.</italic>, 1987</xref>).</p>
            </sec>
            <sec id="sec6">
                <title>Unit root test</title>
                <p>A regression model must have stationary conditions to prevent spurious regressions. Our study examines stationary conditions by using the ADF test (Augmented Dickey-Fuller) (
                    <xref ref-type="bibr" rid="ref14">Cheng 
                        <italic toggle="yes">et al.,</italic> 2021</xref>). The null hypothesis is rejected if the ADF value (calculated) is less than the critical levels (1%, 5%, and 10%). The cointegration test follows the unit root test for measuring the extent of co-movement of long-term relationships among indices (
                    <xref ref-type="bibr" rid="ref14">Cheng 
                        <italic toggle="yes">et al.,</italic> 2021</xref>).</p>
            </sec>
            <sec id="sec7">
                <title>Johansen cointegration test</title>
                <p>In Johansen cointegration
                    <xref ref-type="fn" rid="fn2">
                        <sup>2</sup>
                    </xref>, the number of independent linear combinations (k) that give a stationary process is determined for (m) time series variables. The results are given as cointegration ranks. There is no cointegration relationship when the rank is 0, and there is a cointegration equation when the rank is 1, and so on. Johansen cointegration test analyses the relationship between the NSE index and global index by using Eigen-values and trace statistics. Integration is based on how many times a series need to be differentiated to produce a stationary series. The Johansen cointegration test is a statistical method used to determine the presence of cointegration among a set of time series variables. Cointegration implies a long-term relationship between these variables, which is essential for various econometric models and time series analysis. In the test, &#x2018;P&#x2019; denotes the number of cointegration vectors (also known as the cointegration rank). It represents the maximum number of linearly independent combinations of the variables that exhibit a stationary behaviour. &#x2018;m&#x2019; represents the number of variables in the system being tested, and &#x2018;k&#x2019; is the number of deterministic terms (e.g., intercept or time trend) included in the model. The first difference generates an integrated series known as I (1). As a result, a time series with I (0) is stationary; if I (1), the level is stationary and the change is stationary. The equation below determines cointegration:
                    <disp-formula id="e4">
                        <mml:math display="block">
                            <mml:mi mathvariant="normal">P</mml:mi>
                            <mml:mo>=</mml:mo>
                            <mml:mi mathvariant="normal">m</mml:mi>
                            <mml:mo>&#x2212;</mml:mo>
                            <mml:mi mathvariant="normal">k</mml:mi>
                        </mml:math>
                    </disp-formula>
                </p>
                <p>Null Hypothesis; H0: When k = 0, then p = m, there is no linkage among the variables
                    <xref ref-type="fn" rid="fn3">
                        <sup>3</sup>
                    </xref>.</p>
                <p>Alternate Hypothesis; H1: 0 &lt; k &lt; m, 0 &lt; p &lt; m There is a significant linkage among the variables.</p>
            </sec>
        </sec>
        <sec id="sec8">
            <title>4. Descriptive statistical analysis</title>
            <p>Individual observations show large shifts during crisis times are further followed by large shifts in the return of the NSE indices and the global indices representing the wild and calm periods of volatility clustering. 
                <xref ref-type="fig" rid="f1">Figure 1</xref> shows the clustering of the volatility for the daily return of indices, firstly noted by 
                <xref ref-type="bibr" rid="ref45">Mandelbrot and Taylor (1967)</xref> &#x2018;large changes tend to be followed by large changes, of either sign, and small changes tend to be followed by small changes.&#x2019; 
                <xref ref-type="fig" rid="f2">Figure 2</xref> represent the leptokurtic statistical distributions with kurtosis greater than three results to a greater extent of volatility because of positive or negative shocks in the stock market. While the Jerque-Bera of NSE daily return (32031.42) measures the high volatility. The shape of the curve and the value of kurtosis along with the low probability value reveal the possibility for the rejection of the null hypothesis. The skewness measures the asymmetry of a time series over a given period (normal skewness; 0, positive skewness; long right tail, negative skewness; long left tail).</p>
            <fig fig-type="figure" id="f1" orientation="portrait" position="float">
                <label>Figure 1. </label>
                <caption>
                    <title>Volatility clustering plot of daily returns to NSE, NIKKEI, NASDAQ, S&amp;P, DJI, FTSE, FTXIN, HANG SENG, DAX AND CAC INDICES (Source: author&#x2019;s calculations).</title>
                </caption>
                <graphic id="gr1" orientation="portrait" position="float" xlink:href="https://f1000research-files.f1000.com/manuscripts/169461/0f8800d0-47b8-4ba3-ad7a-17b729b77b17_figure1.gif"/>
            </fig>
            <fig fig-type="figure" id="f2" orientation="portrait" position="float">
                <label>Figure 2. </label>
                <caption>
                    <title>Time series plot of returns to NSE (Source: author&#x2019;s calculations).</title>
                </caption>
                <graphic id="gr2" orientation="portrait" position="float" xlink:href="https://f1000research-files.f1000.com/manuscripts/169461/0f8800d0-47b8-4ba3-ad7a-17b729b77b17_figure2.gif"/>
            </fig>
            <p>
                <xref ref-type="table" rid="T1">Table 1</xref> indicates that the left-hand tail of the German Blue chip stock market (DAX) is smaller than the right-hand tail. In other indices, a negative skewness (the left-hand tail is larger than the right-hand tail) indicates a scenario of small wins and few large losses for investors. 
                <xref ref-type="table" rid="T1">Table 1</xref> provides descriptive statistics on daily returns, highlighting Jarque-Bera standard deviation using the same sample for all indices. The NSE returns over the entire period sample shows a negatively skewed distribution of the sample (Jaque-Bera 33817.66, standard deviation 0.013768, Kurtosis 20.31397). In Japan, the statistical moments of the NIKKEI were Jarque-Bera 5525.19, standard deviation 0.0151, and Kurtosis 10.171). Jarque-Bera values for US Market (NASDAQ; 10447.74, standard deviation 0.014376, and Kurtosis 17.26778), (S&amp;P; 23085.57, standard deviation 0.013164), and (DJI; 33669.34, standard deviation 0.012713, and Kurtosis 20.25097). These all show a similar leptokurtic distribution with negative skewness.</p>
            <table-wrap id="T1" orientation="portrait" position="float">
                <label>Table 1. </label>
                <caption>
                    <title>Descriptive statistics (common sample) for daily returns of indices.</title>
                </caption>
                <table content-type="article-table" frame="hsides">
                    <thead>
                        <tr>
                            <th align="left" colspan="1" rowspan="1" valign="top">Indices</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">RNSE</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">NIKKEI</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">RNASDAQ</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">RS_P</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">RDJI</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">RDAX</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">RCAC</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">RFTSE</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">RFTXIN</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">RHNGSNG</th>
                        </tr>
                    </thead>
                    <tbody>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Mean</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0003</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0004</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0002</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0002</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">1.0003</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0001</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.0001</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.0002</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Median</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0005</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0005</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0011</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0007</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0006</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">1.0007</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0005</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0004</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.0001</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0003</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Maximum</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.1633</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0773</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.1185</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.1096</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.1076</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">1.1140</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.1059</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0938</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0920</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.1341</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Minimum</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.1390</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.1211</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.1300</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.1277</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.1384</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.8776</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.1310</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.1151</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.0942</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.1358</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Std. Dev.</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0138</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0151</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0144</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0132</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0127</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0143</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0147</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0123</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0167</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0146</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Skewness</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.2609</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.8050</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.3772</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.5604</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.5324</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0784</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.1622</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.2589</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.1468</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.0441</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Kurtosis</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">20.3140</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">10.1740</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">12.5983</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">17.2678</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">20.2510</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">12.3473</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">11.7053</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">13.8112</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">7.2921</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">13.1632</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Jarque-Bera</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">33817.6600</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">5525.1930</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">10447.7400</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">23085.5700</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">33669.3400</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">9850.2390</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">8553.0460</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">13203.8800</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">2086.0790</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">11642.6900</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Probability</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.0000</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Sum</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.7811</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.0068</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">1.2053</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.6292</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.5666</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">2705.7210</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.1920</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.0574</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.3805</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">-0.5348</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Sum Sq. Dev.</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.5126</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.5597</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.5588</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.4686</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.4370</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.5557</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.5822</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.4058</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.7521</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">0.5733</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Observations</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">2705.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">2705.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">2705.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">2705.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">2705.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">2705.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">2705.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">2705.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">2705.0000</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">2705.0000</td>
                        </tr>
                    </tbody>
                </table>
                <table-wrap-foot>
                    <p>Source: author&#x2019;s calculations.</p>
                </table-wrap-foot>
            </table-wrap>
            <p>It is evident from the descriptive statistics that the significant value probabilities and the Jerque-Bera calculation indicate that the residual distribution of daily returns, like other indices (FTSE) Jarque-Bera 13203.88, standard deviation 0.012250 with Kurtosis value 13.81124), Germany (DAX) Jarque-Bera 9850.239, standard deviation 0.014335 with Kurtosis value 12.34726), Hong Kong (HANG SENG) Jarque-Bera 11642.69, standard deviation 0.0126 and Kurtosis 19.89 and France (CAC) Jarque-Bera 8553.046. The values of skewness&#x2019; and kurtosis observed the volatility clustering and specify the distribution of all indices (variables) is leptokurtic. Only Germany (DAX) is positively skewed, which specify that the huge gain covers the small losses of investors. The Indian stock market exhibits a positive correlation with the world market, as seen in 
                <xref ref-type="table" rid="T2">Table 2</xref>; however, the correlation of all variables is not strong enough to explain the cointegration.</p>
            <table-wrap id="T2" orientation="portrait" position="float">
                <label>Table 2. </label>
                <caption>
                    <title>Correlation matrix for the daily returns of indices.</title>
                </caption>
                <table content-type="article-table" frame="hsides">
                    <thead>
                        <tr>
                            <th align="left" colspan="1" rowspan="1" valign="top">Dependent variable</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">RNSE</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">RNIKKEI</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">RNASDAQ</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">RFTXIN</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">RDAX</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">RHNGSNG</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">RFTSE</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">RDJI</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">RCAC</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">RS_P</th>
                        </tr>
                    </thead>
                    <tbody>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="top">RNSE</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">1.000</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.384</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.259</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.287</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.426</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.567</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.441</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.324</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.423</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.322</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="top">RNIKKEI</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.384</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">1.000</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.141</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.330</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.345</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.600</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.373</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.188</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.366</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.181</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="top">RNASDAQ</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.259</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.141</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">1.000</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.113</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.571</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.238</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.519</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.876</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.544</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.931</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="top">RFTXIN</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.287</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.330</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.113</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">1.000</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.183</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.563</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.208</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.110</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.193</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.116</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="top">RDAX</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.426</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.345</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.571</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.183</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">1.000</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.407</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.848</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.646</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.921</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.643</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="top">RHNGSNG</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.567</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.600</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.238</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.563</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.407</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">1.000</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.436</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.271</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.402</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.273</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="top">RFTSE</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.441</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.373</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.519</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.208</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.848</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.436</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">1.000</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.612</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.894</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.606</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="top">RDJI</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.324</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.188</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.876</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.110</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.646</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.271</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.612</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">1.000</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.627</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.976</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="top">RCAC</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.423</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.366</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.544</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.193</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.921</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.402</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.894</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.627</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">1.000</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.624</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="top">RS_P</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.322</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.181</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.931</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.116</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.643</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.273</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.606</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.976</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">0.624</td>
                            <td align="left" colspan="1" rowspan="1" valign="top">1.000</td>
                        </tr>
                    </tbody>
                </table>
                <table-wrap-foot>
                    <p>Source: author&#x2019;s calculations.</p>
                </table-wrap-foot>
            </table-wrap>
            <p>
                <xref ref-type="table" rid="T2">Table 2</xref> examines the correlation trends between the Indian market and a few selected global markets, indicating that there is a relationship between the Indian stock market and other markets; nevertheless, 
                <xref ref-type="fig" rid="f3">Figure 3</xref> illustrates that this connection is sometimes parallel to the global economy.</p>
            <fig fig-type="figure" id="f3" orientation="portrait" position="float">
                <label>Figure 3. </label>
                <caption>
                    <title>Movement of indices.</title>
                </caption>
                <graphic id="gr3" orientation="portrait" position="float" xlink:href="https://f1000research-files.f1000.com/manuscripts/169461/0f8800d0-47b8-4ba3-ad7a-17b729b77b17_figure3.gif"/>
            </fig>
            <p>It is said that the &#x201c;flap of a butterfly&#x2019;s wings in Brazil could set off a tornado in Texas&#x201d; (
                <xref ref-type="bibr" rid="ref41">Lorenz, 2000</xref>) that is not true in the Indian context. The Indian stock market is still linked to the world market because the NSE has a positive correlation with all global indexes, despite the fact that this correlation has been reducing significantly.</p>
            <sec id="sec9">
                <title>Unit root test analysis</title>
                <p>A unit root test determines whether a time series is stationary. The null hypothesis defines time series as having a unit root, while the alternative hypothesis defines them as being stationary. 
                    <xref ref-type="table" rid="T3">Table 3</xref> indicates the value of t statistics in all variables exceeds the critical value.</p>
                <table-wrap id="T3" orientation="portrait" position="float">
                    <label>Table 3. </label>
                    <caption>
                        <title>Augmented dickey-fuller test statistic.</title>
                    </caption>
                    <table content-type="article-table" frame="hsides">
                        <thead>
                            <tr>
                                <th align="left" colspan="1" rowspan="1" valign="top">Variable</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Coefficient</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Std. Error</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">t-Statistic</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Critical value at 5% level</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Probability</th>
                            </tr>
                        </thead>
                        <tbody>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RNSE(-1)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.96971</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.017038</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-56.91</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-2.8621</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.000</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RNIKKEI (-1)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-1.03895</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.017073</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-60.85</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-2.8621</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.005</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RNASDAQ (-1)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-1.13384</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.016745</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-67.71</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-2.8621</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.000</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RHNGSNG (-1)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-1.00412</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.024458</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-41.05</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-2.8621</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.003</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RFTXIN (-1)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-1.06897</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.017079</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-62.59</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-2.8621</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.001</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RFTSE (-1)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-1.06806</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.024154</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-44.21</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-2.8621</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.000</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RDJI (-1)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-1.14514</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.016719</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-68.49</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-2.8621</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.001</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RDAX (-1)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.99957</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.016817</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-59.43</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-2.8621</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.006</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RCAC (-1)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-1.02699</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.016748</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-61.32</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-2.8621</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.002</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RSP (-1)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-1.14384</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.016723</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-68.40</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-2.8621</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.001</td>
                            </tr>
                        </tbody>
                    </table>
                </table-wrap>
                <p>In this case, these variables were tested again at a difference of one, and the result indicated a null hypothesis, i.e., that the series of all variables are integrated over four lag of order one. To perform Johansen&#x2019;s cointegration test we employed the VAR lag order selection criterion. 
                    <xref ref-type="table" rid="T4">Table 4</xref> identifies the AIC value at the seventh lag so we examined the cointegration test by using the seventh lag, recommended by AIC. A Japanese statistician (
                    <xref ref-type="bibr" rid="ref4">Akaike, 1974</xref>) developed the Akaike information criterion. It currently serves as a paradigm for the foundations of statistics and is also commonly employed for statistical inference. The Akaike information criterion (AIC) is an estimator of prediction error and, therefore, relative model quality for a given set of data. Given a set of data models, AIC determines the quality of each model in comparison to the other models. When a statistical model is employed to depict the process that generated the data, the representation is virtually never perfect; as a result, some information is lost. AIC assesses the relative amount of information lost by a particular model; the less information a model loses, the higher the model&#x2019;s quality.</p>
                <table-wrap id="T4" orientation="portrait" position="float">
                    <label>Table 4. </label>
                    <caption>
                        <title>VAR Lag order selection criteria.</title>
                    </caption>
                    <table content-type="article-table" frame="hsides">
                        <thead>
                            <tr>
                                <th align="left" colspan="1" rowspan="1" valign="top">Lag</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">LogL</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">LR</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">FPE</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">AIC</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">SC</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">HQ</th>
                            </tr>
                        </thead>
                        <tbody>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">105979</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">NA</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4.56E-40</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-62.20665</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-62.18864
                                    <xref ref-type="table-fn" rid="tfn1">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-62.2002</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">106222.7</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">485.8255</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4.19E-40</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-62.291</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-62.093</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-62.22023
                                    <xref ref-type="table-fn" rid="tfn1">*</xref>
                                </td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">106361.5</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">275.7752</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4.10E-40</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-62.31375</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-61.9357</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-62.1786</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">106515</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">304.3213</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3.97E-40</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-62.34519</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-61.7871</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-62.1457</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">106658.3</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">283.1581</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3.87E-40</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-62.37061</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-61.6325</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-62.1068</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">5</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">106777.9</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">235.6114</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3.83E-40</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-62.38211</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-61.464</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-62.054</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">6</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">106907.4</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">254.298</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3.76E-40</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-62.39941</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-61.3012</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-62.0069</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">7</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">107047.5</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">274.3836</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3.68e-40
                                    <xref ref-type="table-fn" rid="tfn1">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-62.42295
                                    <xref ref-type="table-fn" rid="tfn1">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-61.1448</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-61.9662</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">8</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">107138.9</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">178.5166
                                    <xref ref-type="table-fn" rid="tfn1">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3.69E-40</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-62.41792</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-60.9597</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-61.8968</td>
                            </tr>
                        </tbody>
                    </table>
                    <table-wrap-foot>
                        <p>LR: sequential; modified LR test statistic, FPE: Final prediction error; AIC: Akaike information criterion; SC: Schwarz information criterion; HQ: Hannan-Quinn information criterion.</p>
                        <fn-group content-type="footnotes">
                            <fn id="tfn1">
                                <label>*</label>
                                <p>Indicates lag order selected by the criterion (each test at 5% level).</p>
                            </fn>
                        </fn-group>
                    </table-wrap-foot>
                </table-wrap>
            </sec>
        </sec>
        <sec id="sec10" sec-type="results">
            <title>5. Results</title>
            <sec id="sec11">
                <title>Johansen&#x2019;s cointegration test results</title>
                <p>
                    <xref ref-type="table" rid="T5">Table 5</xref> shows the statistical values of Johansen&#x2019;s cointegration test. In addition, it provides information about the maximum Eigen-value. Statistics for all variables dependent (NSE) and independent (World&#x2019;s indices) demonstrate a perfect correlation of cointegration. Since the calculated value of statistics and maximum Eigen-values (
                    <xref ref-type="table" rid="T6">Table 6</xref>) are greater than the critical value (at 5% level) of (
                    <xref ref-type="bibr" rid="ref43">MacKinnon 
                        <italic toggle="yes">et al.,</italic> 1999</xref>), the null hypothesis of no cointegration is rejected in favour of the alternative hypothesis of cointegration. Therefore, the Indian stock market and the global stock market have ten cointegration equations.</p>
                <table-wrap id="T5" orientation="portrait" position="float">
                    <label>Table 5. </label>
                    <caption>
                        <title>Johansen&#x2019;s cointegration test: Lags interval 1 to 7 (in first differences).</title>
                    </caption>
                    <table content-type="article-table" frame="hsides">
                        <thead>
                            <tr>
                                <th align="left" colspan="1" rowspan="1" valign="top">Hypothesized No. of CE(s)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Eigenvalue</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Trace statistic</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Critical value at 0.05</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Prob.
                                    <xref ref-type="table-fn" rid="tfn3">**</xref>
                                </th>
                            </tr>
                        </thead>
                        <tbody>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">None
                                    <xref ref-type="table-fn" rid="tfn2">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.164671</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4699.843</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">239.2354</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.000</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">At most 1
                                    <xref ref-type="table-fn" rid="tfn2">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.155853</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4086.822</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">197.3709</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.001</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">At most 2
                                    <xref ref-type="table-fn" rid="tfn2">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.149812</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3509.579</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">159.5297</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.000</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">At most 3
                                    <xref ref-type="table-fn" rid="tfn2">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.145019</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2956.632</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">125.6154</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.000</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">At most 4
                                    <xref ref-type="table-fn" rid="tfn2">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.134048</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2422.835</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">95.75366</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.000</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">At most 5
                                    <xref ref-type="table-fn" rid="tfn2">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.129529</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1932.479</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">69.81889</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.000</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">At most 6
                                    <xref ref-type="table-fn" rid="tfn2">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.120122</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1459.858</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">47.85613</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.001</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">At most 7
                                    <xref ref-type="table-fn" rid="tfn2">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.106583</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1023.858</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">29.79707</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.000</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">At most 8
                                    <xref ref-type="table-fn" rid="tfn2">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.097395</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">639.8816</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">15.49471</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.005</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">At most 9
                                    <xref ref-type="table-fn" rid="tfn2">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.081803</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">290.7652</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3.841465</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.000</td>
                            </tr>
                        </tbody>
                    </table>
                    <table-wrap-foot>
                        <p>Max-eigenvalue test indicates 10 cointegrating eqn (s) at the 0.05 level.</p>
                        <p>Source: author&#x2019;s calculation.</p>
                        <fn-group content-type="footnotes">
                            <fn id="tfn2">
                                <label>*</label>
                                <p>Denotes rejection of the hypothesis at the 0.05 level.</p>
                            </fn>
                            <fn id="tfn3">
                                <label>**</label>
                                <p>
                                    <xref ref-type="bibr" rid="ref43">MacKinnon 
                                        <italic toggle="yes">et al.</italic> (1999)</xref> p-values.</p>
                            </fn>
                        </fn-group>
                    </table-wrap-foot>
                </table-wrap>
                <table-wrap id="T6" orientation="portrait" position="float">
                    <label>Table 6. </label>
                    <caption>
                        <title>Unrestricted Cointegration Rank Test (Maximum Eigenvalue).</title>
                    </caption>
                    <table content-type="article-table" frame="hsides">
                        <thead>
                            <tr>
                                <th align="left" colspan="1" rowspan="1" valign="top">Hypothesized No. of CE(s)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Eigenvalue</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Max-Eigen statistic</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Critical value at 0.05</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Prob.
                                    <xref ref-type="table-fn" rid="tfn5">**</xref>
                                </th>
                            </tr>
                        </thead>
                        <tbody>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">None
                                    <xref ref-type="table-fn" rid="tfn4">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.164671</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">613.0211</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">64.50472</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.005</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">At most 1
                                    <xref ref-type="table-fn" rid="tfn4">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.155853</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">577.2426</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">58.43354</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.011</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">At most 2
                                    <xref ref-type="table-fn" rid="tfn4">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.149812</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">552.9469</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">52.36261</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.000</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">At most 3
                                    <xref ref-type="table-fn" rid="tfn4">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.145019</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">533.797</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">46.23142</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.001</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">At most 4
                                    <xref ref-type="table-fn" rid="tfn4">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.134048</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">490.3561</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">40.07757</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.000</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">At most 5
                                    <xref ref-type="table-fn" rid="tfn4">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.129529</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">472.6211</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">33.87687</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.000</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">At most 6
                                    <xref ref-type="table-fn" rid="tfn4">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.120122</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">436.0005</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">27.58434</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.007</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">At most 7
                                    <xref ref-type="table-fn" rid="tfn4">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.106583</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">383.9759</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">21.13162</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.000</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">At most 8
                                    <xref ref-type="table-fn" rid="tfn4">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.097395</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">349.1164</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">14.2646</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.001</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">At most 9
                                    <xref ref-type="table-fn" rid="tfn4">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.081803</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">290.7652</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3.841465</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.000</td>
                            </tr>
                        </tbody>
                    </table>
                    <table-wrap-foot>
                        <p>Max-eigenvalue test indicates 10 cointegrating eqn (s) at the 0.05 level.</p>
                        <p>Source: author&#x2019;s calculation.</p>
                        <fn-group content-type="footnotes">
                            <fn id="tfn4">
                                <label>*</label>
                                <p>Denotes rejection of the hypothesis at the 0.05 level.</p>
                            </fn>
                            <fn id="tfn5">
                                <label>**</label>
                                <p>
                                    <xref ref-type="bibr" rid="ref43">MacKinnon 
                                        <italic toggle="yes">et al.</italic> (1999)</xref> p-values.</p>
                            </fn>
                        </fn-group>
                    </table-wrap-foot>
                </table-wrap>
                <p>We employ VECM to evaluate the short-run characteristics of the cointegrated variables in order to ascertain whether they remain stationary over time (
                    <xref ref-type="table" rid="T7">Table 7</xref>). If cointegration has been found between series, we are aware that there is a long-term equilibrium link between them.</p>
                <table-wrap id="T7" orientation="portrait" position="float">
                    <label>Table 7. </label>
                    <caption>
                        <title>Error Correction Term-Long run cointegration equation.</title>
                    </caption>
                    <table content-type="article-table" frame="hsides">
                        <thead>
                            <tr>
                                <th align="left" colspan="1" rowspan="1" valign="top">RNSE(-1)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">RNIKKEI(-1)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">RNASDAQ(-1)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">RHNGSNG(-1)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">RFTXIN(-1)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">RFTSE(-1)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">RDJI(-1)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">RDAX(-1)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">RCAC(-1)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">RSP(-1)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">C</th>
                            </tr>
                        </thead>
                        <tbody>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1.0000</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.100470</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.408195</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-1.492301</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.473043</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-1.127128</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-3.959385</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2.249543</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.430683</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1.425476</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.000007</td>
                            </tr>
                            <tr>
                                <td colspan="1" rowspan="1"/>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(-0.11503)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(-0.39166)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(-0.1197)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(-0.0992)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(-0.16339)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(-0.72218)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(-0.1342)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(-0.12385)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(-0.94428)</td>
                                <td colspan="1" rowspan="1"/>
                            </tr>
                            <tr>
                                <td colspan="1" rowspan="1"/>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[0.87342]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[-1.04221]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[-12.4672]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[4.76870]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[-6.89845]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[-5.48252]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[16.7622]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[3.47735]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[1.50959]</td>
                                <td colspan="1" rowspan="1"/>
                            </tr>
                        </tbody>
                    </table>
                </table-wrap>
                <p>We estimated nine error correction equations using cointegrated vectors that are negative and highly significant at 1%. This demonstrates the presence of a stable long-run autoregression (
                    <xref ref-type="table" rid="T7">Table 7</xref>). The coefficient of ECM is -6.92E-06, indicating a causal link across variables.</p>
                <p>
                    <xref ref-type="table" rid="T8">Table 8</xref> shows the error correction for the short term, which is represented by the adjustment coefficient for a percentage change. Furthermore, the data show that the Indian (lag 1), United States (lag 1), United Kingdom, Japan, and Chinese (lag 1 and 2) markets are all impacted by their respective lags. The worldwide market also has a significant impact on the Indian stock market (see 
                    <xref ref-type="table" rid="T9">Table 9</xref>). The equation can be written as-</p>
                <table-wrap id="T8" orientation="portrait" position="float">
                    <label>Table 8. </label>
                    <caption>
                        <title>Error Correction Term-Short run coefficient.</title>
                    </caption>
                    <table content-type="article-table" frame="hsides">
                        <thead>
                            <tr>
                                <th align="left" colspan="1" rowspan="1" valign="top">Error Correction:</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">D (RNSE)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">D (RNIKKEI)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">D (RNASDAQ)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">D (RHNGSNG)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">D (RFTXIN)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">D (RFTSE)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">D (RDJI)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">D (RDAX)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">D (RCAC)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">D (RSP)</th>
                            </tr>
                        </thead>
                        <tbody>
                            <tr>
                                <td align="left" colspan="1" rowspan="3" valign="top">CointEq1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.073422</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.008423</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.172964</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.139918</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.050975</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.013459</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.177292</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.259194</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.067402</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.177386</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.01453</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.0166</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.01483</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.01565</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.01972</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.01276</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.01284</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.01452</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.01534</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.01346</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[-5.05406]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[-0.50725]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[11.6640]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[8.94308]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[-2.58509]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[1.05497]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[13.8058]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[-17.8493]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[-4.39506]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[13.1769]</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="3" valign="top">D (RNSE(-1))</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.751227</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.022457</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.168387</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.047171</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.058726</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.023718</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.174339</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.26778</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.02764</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.17587</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.02102</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.02403</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.02146</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.02264</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.02854</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.01846</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.01858</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.02102</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.02219</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.01948</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[-35.7320]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[0.93455]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[-7.84640]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[-2.08336]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[2.05789]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[1.28460]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[-9.38083]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[12.7423]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[1.24537]</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">[-9.02734]</td>
                            </tr>
                        </tbody>
                    </table>
                </table-wrap>
                <table-wrap id="T9" orientation="portrait" position="float">
                    <label>Table 9. </label>
                    <caption>
                        <title>Error correction adjustment of NSE with Global Market.</title>
                    </caption>
                    <table content-type="article-table" frame="hsides">
                        <tbody>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">D (RNSE(-1))</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.751</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.022</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.168</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.047</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.059</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.024</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.174</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.268</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.028</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.176</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">D (RNIKKEI(-1))</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.023</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.879</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.005</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.021</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.059</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.017</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.002</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.031</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.003</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.003</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">D (RNASDAQ(-1))</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.010</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.025</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-1.032</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.077</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.150</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.006</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.143</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.056</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.084</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.142</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">D (RHNGSNG(-1))</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.006</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.005</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.226</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.691</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.094</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.006</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.217</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.357</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.069</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.221</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">D (RFTXIN(-1))</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.034</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.031</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.071</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.022</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.891</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.008</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.065</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.091</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.029</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.065</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">D (RDJI(-1))</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.265</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.023</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.320</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.633</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.274</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.413</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.452</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.866</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.442</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.370</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">D (RDAX(-1))</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.126</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.015</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.353</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.291</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.069</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.041</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.347</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.363</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.165</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.355</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">D (RCAC(-1))</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.064</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.042</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.058</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.094</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.009</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.013</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.060</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.098</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.831</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.055</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">D (RSP(-1))</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.067</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.008</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.203</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.312</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.283</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.301</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.090</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.246</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.300</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.741</td>
                            </tr>
                        </tbody>
                    </table>
                </table-wrap>
                <p>
                    <disp-formula>
                        <mml:math display="block">
                            <mml:mo>&#x0394;</mml:mo>
                            <mml:mtext>RNSE</mml:mtext>
                            <mml:mo>=</mml:mo>
                            <mml:mn/>
                            <mml:mo>-</mml:mo>
                            <mml:mn>0.751</mml:mn>
                            <mml:mo>+</mml:mo>
                            <mml:mn>0.023</mml:mn>
                            <mml:mo>+</mml:mo>
                            <mml:mn>0.010</mml:mn>
                            <mml:mo>-</mml:mo>
                            <mml:mn>0.006</mml:mn>
                            <mml:mo>+</mml:mo>
                            <mml:mn>0.034</mml:mn>
                            <mml:mo>-</mml:mo>
                            <mml:mn>0.265</mml:mn>
                            <mml:mo>+</mml:mo>
                            <mml:mn>0.126</mml:mn>
                            <mml:mo>+</mml:mo>
                            <mml:mn>0.064</mml:mn>
                            <mml:mo>+</mml:mo>
                            <mml:mn>0.067</mml:mn>
                            <mml:mo>-</mml:mo>
                            <mml:mn>0.000016</mml:mn>
                        </mml:math>
                    </disp-formula>
                </p>
                <p>Granger causality test is used to validate the utility of one variable for forecasting another. The outcomes derived from doing the Granger causality test on certain pairs of time series are displayed in 
                    <xref ref-type="table" rid="T10">Table 10</xref>. At a significance level of 5%, It has been determined that the Indian stock market (Nifty 50), China, France, and the United States have a bidirectional causal link, whereas the stock markets of Japan, the United Kingdom, and Germany have a unidirectional causal association.</p>
                <table-wrap id="T10" orientation="portrait" position="float">
                    <label>Table 10. </label>
                    <caption>
                        <title>Pair wise Granger Causality Test.</title>
                    </caption>
                    <table content-type="article-table" frame="hsides">
                        <thead>
                            <tr>
                                <th align="left" colspan="1" rowspan="1" valign="top">Null Hypothesis:</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Causality</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">F-Statistic</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Prob.</th>
                            </tr>
                        </thead>
                        <tbody>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RNIKKEI does not Granger Cause RNSE</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">
                                    <xref ref-type="table-fn" rid="tfn6">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4.31154</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4.00E-05</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RNSE does not Granger Cause RNIKKEI</td>
                                <td colspan="1" rowspan="1"/>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1.38081</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1995</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RNASDAQ does not Granger Cause RNSE</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">
                                    <xref ref-type="table-fn" rid="tfn6">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2.24633</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.0217</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RNSE does not Granger Cause RNASDAQ</td>
                                <td colspan="1" rowspan="1"/>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1.21322</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2867</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RHNGSNG does not Granger Cause RNSE</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">
                                    <xref ref-type="table-fn" rid="tfn7">**</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">11.7233</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1.00E-16</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RNSE does not Granger Cause RHNGSNG</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">
                                    <xref ref-type="table-fn" rid="tfn7">**</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">6.76511</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">8.00E-09</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RFTXIN does not Granger Cause RNSE</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">
                                    <xref ref-type="table-fn" rid="tfn6">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1.93379</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.051</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RNSE does not Granger Cause RFTXIN</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.55890</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.8122</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RFTSE does not Granger Cause RNSE</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.48529</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.8675</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RNSE does not Granger Cause RFTSE</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">
                                    <xref ref-type="table-fn" rid="tfn6">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4.25839</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4.00E-05</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RDJI does not Granger Cause RNSE</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">
                                    <xref ref-type="table-fn" rid="tfn6">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2.94895</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.0027</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RNSE does not Granger Cause RDJI</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">
                                    <xref ref-type="table-fn" rid="tfn6">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3.46408</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.0006</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RDAX does not Granger Cause RNSE</td>
                                <td colspan="1" rowspan="1"/>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1.45625</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.168</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RNSE does not Granger Cause RDAX</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">
                                    <xref ref-type="table-fn" rid="tfn6">*</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2.55362</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.009</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RCAC does not Granger Cause RNSE</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">
                                    <xref ref-type="table-fn" rid="tfn7">**</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3.40682</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.0007</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">RNSE does not Granger Cause RCAC</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">
                                    <xref ref-type="table-fn" rid="tfn7">**</xref>
                                </td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">5.75420</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3.00E-07</td>
                            </tr>
                        </tbody>
                    </table>
                    <table-wrap-foot>
                        <fn-group content-type="footnotes">
                            <fn id="tfn6">
                                <label>*</label>
                                <p>Unidirectional.</p>
                            </fn>
                            <fn id="tfn7">
                                <label>**</label>
                                <p>Bidirectional.</p>
                            </fn>
                        </fn-group>
                    </table-wrap-foot>
                </table-wrap>
                <p>The effectiveness of market connectivity is measured by residual diagnostics for heteroscedasticity, which aid in identifying heteroscedasticity (
                    <xref ref-type="table" rid="T11">Table 11</xref>). One can determine whether the model can be trusted based on this. Probability scores over 0.05 indicate that the model should work for the Indian stock market.</p>
                <table-wrap id="T11" orientation="portrait" position="float">
                    <label>Table 11. </label>
                    <caption>
                        <title>VEC Residual Heteroskedasticity Tests (Levels and Squares) Joint test.</title>
                    </caption>
                    <table content-type="article-table" frame="hsides">
                        <thead>
                            <tr>
                                <th align="left" colspan="1" rowspan="1" valign="top">Chi-sq</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">df</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Prob.</th>
                            </tr>
                        </thead>
                        <tbody>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">14409.96</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2310</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2731</td>
                            </tr>
                        </tbody>
                    </table>
                </table-wrap>
                <p>The effectiveness of market connectivity is measured by residual diagnostics for heteroscedasticity, which aid in identifying heteroscedasticity (
                    <xref ref-type="table" rid="T11">Table 11</xref>). One can determine whether the model can be trusted based on this. Probability scores over 0.05 indicate that the model should work for the Indian stock market (
                    <xref ref-type="table" rid="T12">Table 12</xref>).</p>
                <table-wrap id="T12" orientation="portrait" position="float">
                    <label>Table 12. </label>
                    <caption>
                        <title>Individual component of Heteroskedasticity Tests.</title>
                    </caption>
                    <table content-type="article-table" frame="hsides">
                        <thead>
                            <tr>
                                <th align="left" colspan="1" rowspan="1" valign="top">Dependent</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">R-squared</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">F(42,3369)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Prob.</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Chi-sq(42)</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Prob.</th>
                            </tr>
                        </thead>
                        <tbody>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res1*res1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.107797</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">9.691552</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.8491</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">367.8023</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2776</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res2*res2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.181525</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">17.79023</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1861</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">619.362</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1832</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res3*res3</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.245414</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">26.08816</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2733</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">837.3543</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.8308</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res4*res4</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.24311</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">25.76452</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2513</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">829.4917</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.6795</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res5*res5</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.10608</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">9.518909</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2750</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">361.9454</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.5404</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res6*res6</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.279689</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">31.1463</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2202</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">954.2979</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2081</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res7*res7</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.308291</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">35.75108</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3071</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1051.889</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3194</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res8*res8</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.223263</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">23.05659</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.4016</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">761.7742</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2776</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res9*res9</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.171984</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">16.66104</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2859</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">586.8106</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1832</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res10*res10</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.286136</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">32.15199</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3401</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">976.2947</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1772</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res2*res1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.112101</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">10.12744</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2325</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">382.49</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1663</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res3*res1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.071889</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">6.213195</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2613</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">245.2857</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.8307</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res3*res2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.056146</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4.771584</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3298</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">191.5688</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3795</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res4*res1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.082558</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">7.218303</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2705</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">281.6896</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2403</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res4*res2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.148332</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">13.97063</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2794</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">506.1084</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2081</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res4*res3</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.080119</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">6.986478</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2523</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">273.3676</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3192</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res5*res1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.084268</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">7.381536</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2766</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">287.5228</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.0849</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res5*res2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.08109</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">7.07855</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3186</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">276.6781</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1186</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res5*res3</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.062818</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">5.376638</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3555</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">214.3345</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2173</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res5*res4</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.082277</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">7.191465</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.4032</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">280.7284</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2151</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res6*res1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.144891</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">13.59161</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.849</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">494.3675</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1275</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res6*res2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.062309</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">5.330219</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1186</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">212.5994</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1220</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res6*res3</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.104032</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">9.313818</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1273</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">354.9584</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3107</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res6*res4</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.082839</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">7.245066</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1251</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">282.6475</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.4101</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res6*res5</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.051764</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4.378883</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2175</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">176.6189</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2185</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res7*res1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.075143</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">6.517239</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2201</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">256.3868</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1340</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res7*res2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.053046</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4.493362</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3107</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">180.9913</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1232</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res7*res3</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.277256</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">30.77146</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.4011</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">945.9974</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2161</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res7*res4</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.09798</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">8.713152</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2185</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">334.3093</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1231</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res7*res5</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.058492</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4.983406</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3401</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">199.5756</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.8908</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res7*res6</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.09336</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">8.259953</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.5232</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">318.5442</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.6995</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res8*res1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.065894</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">5.658456</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.8261</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">224.8287</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.9623</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res8*res2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.069079</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">5.952316</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.6329</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">235.6981</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.9335</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res8*res3</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.08137</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">7.105188</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.7270</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">277.6345</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.9342</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res8*res4</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.071998</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">6.223296</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2791</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">245.6557</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.9734</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res8*res5</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.062693</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">5.365277</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2521</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">213.91</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.9999</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res8*res6</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.118582</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">10.79167</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2765</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">404.6017</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.8779</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res8*res7</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.100871</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">8.999005</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3187</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">344.1708</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.8836</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res9*res1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.070157</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">6.052196</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1355</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">239.3756</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.8257</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res9*res2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.044729</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3.755897</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1403</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">152.6151</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.0747</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res9*res3</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.100238</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">8.936242</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1849</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">342.0109</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.9623</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res9*res4</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.095436</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">8.462996</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3186</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">325.6273</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.9335</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res9*res5</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.034976</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2.907223</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.4273</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">119.3367</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.9342</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res9*res6</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.122225</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">11.16938</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2514</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">417.0321</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.9734</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res9*res7</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.123103</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">11.26089</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2755</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">420.0281</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.9999</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res9*res8</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.077727</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">6.760306</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2209</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">265.2058</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.8779</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res10*res1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.066785</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">5.74047</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3072</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">227.8697</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.8836</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res10*res2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.059739</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">5.096418</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.4014</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">203.8311</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.8257</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res10*res3</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.265686</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">29.02278</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.285</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">906.5213</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.0747</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res10*res4</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.095196</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">8.439463</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.7340</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">324.808</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.9623</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res10*res5</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.060465</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">5.16229</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.8232</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">206.3064</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.9335</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res10*res6</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.090073</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">7.940315</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2361</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">307.3278</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2107</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res10*res7</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.298719</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">34.16823</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1329</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1019.229</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.0683</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res10*res8</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.096352</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">8.552874</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2710</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">328.7523</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.9199</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">res10*res9</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.110456</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">9.960349</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.6213</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">376.8766</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.8379</td>
                            </tr>
                        </tbody>
                    </table>
                </table-wrap>
                <p>The Jarque-Bera test in statistics determines if sample data have skewness and kurtosis that are consistent with a normal distribution. The result of 
                    <xref ref-type="table" rid="T13">Table 13</xref> shows that the regression residual is normally distributed since the p value is greater than 0.05.</p>
                <table-wrap id="T13" orientation="portrait" position="float">
                    <label>Table 13. </label>
                    <caption>
                        <title>VEC Residual Normality Tests: Null Hypothesis: Residuals are multivariate normal.</title>
                    </caption>
                    <table content-type="article-table" frame="hsides">
                        <thead>
                            <tr>
                                <th align="left" colspan="1" rowspan="1" valign="top">Component</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Skewness</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Chi-sq</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">df</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Prob.
                                    <xref ref-type="table-fn" rid="tfn8">*</xref>
                                </th>
                            </tr>
                        </thead>
                        <tbody>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.030822</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.234808</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.6280</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.341632</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">28.84747</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2776</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.627158</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">97.21750</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.1832</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.117999</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3.441499</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.8308</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">5</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.381231</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">35.92239</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.6795</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">6</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.287373</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">20.41181</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.5404</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">7</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1.312546</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">425.8131</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2081</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">8</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.070094</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1.214358</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2705</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">9</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.003174</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.002490</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.9602</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">10</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">-0.355615</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">31.25722</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.0000</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">Joint</td>
                                <td colspan="1" rowspan="1"/>
                                <td align="left" colspan="1" rowspan="1" valign="middle">644.3626</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">10</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2271</td>
                            </tr>
                        </tbody>
                    </table>
                    <table content-type="article-table" frame="hsides">
                        <thead>
                            <tr>
                                <th align="left" colspan="1" rowspan="1" valign="top">Component</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Kurtosis</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Chi-sq</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">df</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Prob.
                                    <xref ref-type="table-fn" rid="tfn8">*</xref>
                                </th>
                            </tr>
                        </thead>
                        <tbody>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">20.83695</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">19659.44</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.849</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">10.34838</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3336.671</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.186</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">12.81838</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">5956.751</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.273</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">5.912879</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">524.2937</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.251</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">5</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">6.440253</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">731.3253</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.275</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">6</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">10.60865</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3577.214</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.220</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">7</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">89.73248</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">464829.3</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.307</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">8</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4.173781</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">85.13416</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.401</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">9</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4.787424</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">197.4173</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.285</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">10</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">10.62113</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3588.961</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.849</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">Joint</td>
                                <td colspan="1" rowspan="1"/>
                                <td align="left" colspan="1" rowspan="1" valign="middle">502486.5</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">10</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.643</td>
                            </tr>
                        </tbody>
                    </table>
                    <table content-type="article-table" frame="hsides">
                        <thead>
                            <tr>
                                <th align="left" colspan="1" rowspan="1" valign="top">Component</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Jarque-Bera</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Chi-sq</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">df</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Prob.
                                    <xref ref-type="table-fn" rid="tfn8">*</xref>
                                </th>
                            </tr>
                        </thead>
                        <tbody>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">19659.68</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.279</td>
                                <td colspan="1" rowspan="1"/>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3365.519</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.252</td>
                                <td colspan="1" rowspan="1"/>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">6053.969</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.276</td>
                                <td colspan="1" rowspan="1"/>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">527.7352</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.318</td>
                                <td colspan="1" rowspan="1"/>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">5</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">767.2477</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.355</td>
                                <td colspan="1" rowspan="1"/>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">6</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3597.626</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.403</td>
                                <td colspan="1" rowspan="1"/>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">7</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">465255.1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.279</td>
                                <td colspan="1" rowspan="1"/>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">8</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">86.34852</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.252</td>
                                <td colspan="1" rowspan="1"/>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">9</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">197.4198</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.357</td>
                                <td colspan="1" rowspan="1"/>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">10</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3620.218</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.348</td>
                                <td colspan="1" rowspan="1"/>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">Joint</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">503130.8</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">20</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.294</td>
                                <td colspan="1" rowspan="1"/>
                            </tr>
                        </tbody>
                    </table>
                    <table-wrap-foot>
                        <fn-group content-type="footnotes">
                            <fn id="tfn8">
                                <label>*</label>
                                <p>Approximate p-values do not account for coefficient.</p>
                            </fn>
                        </fn-group>
                    </table-wrap-foot>
                </table-wrap>
                <p>The null hypothesis is accepted for the sample based on the serial correlation test results, which show that the p-value is greater than 0.05 at the 5% significance level. The serial correlation verifies the accuracy and validity of the results of the cointegration test (
                    <xref ref-type="table" rid="T14">Table 14</xref>).</p>
                <table-wrap id="T14" orientation="portrait" position="float">
                    <label>Table 14. </label>
                    <caption>
                        <title>Serial Correlation Test at lag h</title>
                    </caption>
                    <table content-type="article-table" frame="hsides">
                        <thead>
                            <tr>
                                <th align="left" colspan="7" rowspan="1" valign="top">Null hypothesis: No serial correlation at lag h</th>
                            </tr>
                            <tr>
                                <th align="left" colspan="1" rowspan="1" valign="top">Lag</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">LRE* stat</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">df</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Prob.</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Rao F-stat</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">df</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Prob.</th>
                            </tr>
                        </thead>
                        <tbody>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2380.901</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">100</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.0751</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">24.96913</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(100, 24147.3)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.7140</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3384.198</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">100</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.7729</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">36.24937</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(100, 24147.3)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3646</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3984.477</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">100</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.6425</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">43.22549</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(100, 24147.3)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.8996</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">266.5445</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">100</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.8944</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2.674753</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(100, 24147.3)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3410</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">5</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">224.3562</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">100</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2711</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2.249431</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(100, 24147.3)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.5125</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">6</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">241.8038</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">100</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3565</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2.425239</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(100, 24147.3)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.6143</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">7</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">294.6459</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">100</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.7321</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2.958468</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(100, 24147.3)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.8574</td>
                            </tr>
                        </tbody>
                    </table>
                </table-wrap>
                <p>Serial correlation test findings at lag 4 and 5 indicate that the p-value is less than 0.05 at the 5% significance level, hence rejecting the null hypothesis for the sample. The serial correlation fails to corroborate the accuracy and validity of the cointegration test results (
                    <xref ref-type="table" rid="T15">Table 15</xref>). Consequently, we transitioned to variance decomposition analysis.</p>
                <table-wrap id="T15" orientation="portrait" position="float">
                    <label>Table 15. </label>
                    <caption>
                        <title>Serial Correlation Test at lags 1 to h.</title>
                    </caption>
                    <table content-type="article-table" frame="hsides">
                        <thead>
                            <tr>
                                <th align="left" colspan="7" rowspan="1" valign="top">Null hypothesis: No serial correlation at lags 1 to h</th>
                            </tr>
                            <tr>
                                <th align="left" colspan="1" rowspan="1" valign="top">Lag</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">LRE* stat</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">df</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Prob.</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Rao F-stat</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">df</th>
                                <th align="left" colspan="1" rowspan="1" valign="top">Prob.</th>
                            </tr>
                        </thead>
                        <tbody>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">1</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2380.901</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">100</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.0751</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">24.96913</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(100, 24147.3)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.7140</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">2</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3689.429</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">200</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3721</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">19.55190</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(200, 30234.0)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3477</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">3</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4636.610</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">300</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.4201</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">16.55209</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(300, 31896.4)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3105</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">4</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">5758.028</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">400</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2207</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">15.64493</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(400, 32489.1)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.0421</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">5</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">6473.101</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">500</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.2512</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">14.19631</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(500, 32725.1)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.0169</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">6</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">7118.972</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">600</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.3665</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">13.11748</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(600, 32811.8)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.0847</td>
                            </tr>
                            <tr>
                                <td align="left" colspan="1" rowspan="1" valign="middle">7</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">7677.811</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">700</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.0321</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">12.21155</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">(700, 32825.8)</td>
                                <td align="left" colspan="1" rowspan="1" valign="middle">0.9164</td>
                            </tr>
                        </tbody>
                    </table>
                </table-wrap>
                <p>According to the graphical structure (
                    <xref ref-type="fig" rid="f4">Figure 4</xref>), global indices can explain approximately 5-20 percent of India's prediction error variance, whereas India can explain approximately 5-10 percent of the worldwide indices' forecast error.</p>
                <fig fig-type="figure" id="f4" orientation="portrait" position="float">
                    <label>Figure 4. </label>
                    <caption>
                        <title>Graphical Representation of Variance decomposition.</title>
                    </caption>
                    <graphic id="gr4" orientation="portrait" position="float" xlink:href="https://f1000research-files.f1000.com/manuscripts/169461/0f8800d0-47b8-4ba3-ad7a-17b729b77b17_figure4.gif"/>
                </fig>
                <p>The Table 16 (extended data; 
                    <xref ref-type="bibr" rid="ref84">Ali 
                        <italic toggle="yes">et al</italic>., 2024</xref>) illustrates the outcomes of VD generated by a multivariate VAR system for both the Indian and global markets. The results of the variance decomposition (VD) analysis in India indicate that it accounts for all of its own forecast error variance for the 1-day ahead prediction, and 95.45 percent of its own forecast error variance for the 10-days ahead forecast. The VD analysis shows that the forecast error variance in India is not significantly influenced by Japan. Conversely, the variance decomposition of Japan accounts for 99.93 percent of its own 1-day prediction error variance and exhibits nearly identical values for the 10-day forecast error variance. Similarly, whether looking at horizons of 1-day and 10-days ahead, NSE accounts for 6.7 and 11.9 percent respectively, of the variance in forecast errors for the Nikkei.</p>
                <p>In 
                    <xref ref-type="fig" rid="f5">Figure 5</xref>, we show impulse response functions associated with the non-factorized one standard deviation of innovations for the Indian stock market and the stock markets of some of India&#x2019;s top trading partners and developed nations. It depicts the negative impulse responses of the Chinese and Japanese stock markets. Interestingly, both markets are responding similarly to a shock to the Indian stock market in their respective stock markets. Geographic proximity may be the reason for this. The established stock markets of the United States and other economies have a distinct trend. It demonstrates that these markets are in fact developed and have a robust positive impulse reaction to the Indian stock market.</p>
                <fig fig-type="figure" id="f5" orientation="portrait" position="float">
                    <label>Figure 5. </label>
                    <caption>
                        <title>Impulse response functions (Source: authors calculations).</title>
                    </caption>
                    <graphic id="gr5" orientation="portrait" position="float" xlink:href="https://f1000research-files.f1000.com/manuscripts/169461/0f8800d0-47b8-4ba3-ad7a-17b729b77b17_figure5.gif"/>
                </fig>
            </sec>
            <sec id="sec12">
                <title>Empirical results</title>
                <p>This study shows innovations in the Indian stock market do indeed propagate to India&#x2019;s top trading partner&#x2019;s stock markets in a time-varying manner. In this study, the U.S. stock market appears to be the most influential. The analysis of the ADF statistics (
                    <xref ref-type="table" rid="T3">Table 3</xref>) confirmed the unit root series for all indices and then we determined lag order using the VAR Lag Order Selection Criteria (
                    <xref ref-type="table" rid="T4">Table 4</xref>) to carry out causality test. To perform the cointegration test, we selected the AIC, indicating the third lag. 
                    <xref ref-type="table" rid="T5">Table 5</xref> reveals the critical value is less than trace statistics and Max-Eigen values, which rejects the null hypothesis of no causal links, resulting in cointegration equations among all variables. Panel C (
                    <xref ref-type="table" rid="T7">Table 7</xref>) predicts the long-term cointegration equation for the Indian stock market, which suggests that Japan (NIKKEI), US (NASDAQ, DJI, UK (FTSE), Germany (DAX), Hong Kong (HANG SENG) and France (CAC) indices have a positive correlation with Indian Indices (NSE), while China (RFTXIN) and US (S&amp;P) indices have a negative correlation, considering ceteris paribus on Indian stock market. As 
                    <xref ref-type="bibr" rid="ref63">Song 
                        <italic toggle="yes">et al</italic>. (2021)</xref> have documented supporting evidence, our findings are consistent with the idea that global financial crises have positively influenced interdependence of stock markets in Asian countries. Based on the coefficients, the linkage between the Indian stock market and the global market is statistically significant at a 1% level. Additionally, the Chinese stock market indices and S&amp;P show a negative impact on Indian stock markets and the NASDAQ and Dow Jones indices in the US, Hong Kong (HANG SENG), and Japan (NIKKEI) have shown the strongest long-term correlation with Indian markets. The impulse reaction of NIKKEI to unit shock in NSE causes a little decrease in NSE on days 3 and 4, but an increase on day 6. Between days 8 and 10, this effect increases marginally. Similarly, when a unit shock is applied to NSE, NIKKEI displays a mixed reaction. This is evidence that the Japanese and Indian stock markets are not fully integrated. The impulse response of S&amp;P to a unit shock on the NSE demonstrates that it has a negative impact on the SENSEX on the second day and a positive impact on the third day. It indicates that the NSE is highly cointegrated with the S&amp;P and in the same way, DJI, NASDAQ, FTSE, and CAC. In addition, HNGSNG, DAX, and FTXIN do not have a significant impact on the Indian stock market. Similar findings are reported by 
                    <xref ref-type="bibr" rid="ref15">Choudhary and Singhal (2020)</xref> and 
                    <xref ref-type="bibr" rid="ref47">Mukherjee and Bose (2008)</xref>. In addition, we find that our findings are in line with those of 
                    <xref ref-type="bibr" rid="ref81">Tripathi and Sethi (2012)</xref>, 
                    <xref ref-type="bibr" rid="ref77">Hoque 
                        <italic toggle="yes">et al</italic>. (2007)</xref>, etc. The correlation results are consistent with 
                    <xref ref-type="bibr" rid="ref58">Seth and Panda (2020)</xref> indicated that the Indian stock market index has a strong positive correlation with the US stock market index.</p>
            </sec>
        </sec>
        <sec id="sec13" sec-type="conclusion">
            <title>6. Conclusion</title>
            <p>The empirical findings suggest that the selected stock markets have a long-term dynamic. According to our research, the volatility of the US stock market considerably affected the Indian stock market. We performed a vector error correction model test to assess the stationary conditions of the series. This test demonstrated that the sequence is stationary. However, the variables become constant after considering the original difference. Cointegration tests show that the Indian stock market is integrated over time owing to the presence of a cointegration vector. A model of error correction demonstrates conclusively that variables are causal in the long-term. The stock market in India is impacted by those in the United States, Great Britain, Japan, and Germany. In addition, we applied the pairwise Granger causality test, which reveals the lead-lag connection across the markets, to test for short-term causative and informational linkages among diverse pairs of markets. According to our findings, the Indian stock market is neither fully connected nor completely decoupled from the global market. Nonetheless, the amount of integration implies that portfolio diversification can still result in substantial risk reduction and return maximisation in both the short-term and long-term by diversifying their portfolio during a crisis. In recent years, the returns on major US stock indices have dominated the returns for Indian stocks. Similar results show that the bank-dominated financial sectors of the ASEAN five and China are increasingly integrated (
                <xref ref-type="bibr" rid="ref12">Caporale 
                    <italic toggle="yes">et al</italic>., 2021</xref>).</p>
            <p>The study is prone to various limitations because it relies on secondary sources of data, which have inherent limitations, such as the total number of trading days during the study period for each country were different. So, the sample was adjusted with the help of EViews software. A quick glance at the study highlights clear-cut investment and portfolio diversification opportunities for international investors. This may help regulators formulate better policies concerning price discovery mechanisms. Moreover, it is possible to extend the present study to include global contagion issues between the sample countries. This could be done using high frequency data.</p>
        </sec>
        <sec id="sec14">
            <title>Data availability</title>
            <p>Figshare: Cointegration and Causality Relationship, 
                <ext-link ext-link-type="uri" xlink:href="https://doi.org/10.6084/m9.figshare.20263803.v2">https://doi.org/10.6084/m9.figshare.20263803.v2</ext-link> (
                <xref ref-type="bibr" rid="ref5">Ali 
                    <italic toggle="yes">et al</italic>., 2022</xref>).</p>
            <p>This project contains the following underlying data:
                <list list-type="bullet">
                    <list-item>
                        <label>&#x2022;</label>
                        <p>CHINA A 50(FTXIN9).xlsx</p>
                    </list-item>
                    <list-item>
                        <label>&#x2022;</label>
                        <p>DAX.xlsx</p>
                    </list-item>
                    <list-item>
                        <label>&#x2022;</label>
                        <p>NIKKEI.xlsx</p>
                    </list-item>
                    <list-item>
                        <label>&#x2022;</label>
                        <p>NSE.xlsx</p>
                    </list-item>
                    <list-item>
                        <label>&#x2022;</label>
                        <p>S&amp;P 500.xlsx</p>
                    </list-item>
                    <list-item>
                        <label>&#x2022;</label>
                        <p>CAC 40 (FCHI).xlsx</p>
                    </list-item>
                    <list-item>
                        <label>&#x2022;</label>
                        <p>DJI.xlsx</p>
                    </list-item>
                    <list-item>
                        <label>&#x2022;</label>
                        <p>HANG SENG.xlsx</p>
                    </list-item>
                    <list-item>
                        <label>&#x2022;</label>
                        <p>NASDAQ 100.xlsx</p>
                    </list-item>
                    <list-item>
                        <label>&#x2022;</label>
                        <p>FTSE.xlsx</p>
                    </list-item>
                </list>
            </p>
            <p>Data are available under the terms of the 
                <ext-link ext-link-type="uri" xlink:href="https://creativecommons.org/licenses/by/4.0/legalcode">Creative Commons Attribution 4.0 International license</ext-link> (CC-BY 4.0).</p>
            <sec id="sec15">
                <title>Extended data</title>
                <p>Figshare: &#x201c;Cointegration and causality relationship of Indian stock market with selected world markets&#x201d; Table 16 Variance Decomposition of RNSE, 
                    <ext-link ext-link-type="uri" xlink:href="https://doi.org/10.6084/m9.figshare.26373988.v1">https://doi.org/10.6084/m9.figshare.26373988.v1</ext-link> (
                    <xref ref-type="bibr" rid="ref84">Ali 
                        <italic toggle="yes">et al</italic>., 2024</xref>).</p>
                <p>Data are available under the terms of the 
                    <ext-link ext-link-type="uri" xlink:href="https://creativecommons.org/licenses/by/4.0/legalcode">Creative Commons Attribution 4.0 International license</ext-link> (CC-BY 4.0).</p>
            </sec>
        </sec>
    </body>
    <back>
        <ref-list>
            <title>References</title>
            <ref id="ref1">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Abuzayed</surname>
                            <given-names>B</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Al-Fayoumi</surname>
                            <given-names>N</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Charfeddine</surname>
                            <given-names>L</given-names>
                        </name>
</person-group>:
                    <article-title>Long range dependence in an emerging stock market&#x2019;s sectors: volatility modelling and VaR forecasting.</article-title>
                    <source>

                        <italic toggle="yes">Appl. Econ.</italic>
</source>
                    <year>2018</year>;<volume>50</volume>(<issue>23</issue>):<fpage>2569</fpage>&#x2013;<lpage>2599</lpage>.
                    <pub-id pub-id-type="doi">10.1080/00036846.2017.1403559</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref2">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Aggarwal</surname>
                            <given-names>S</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Raja</surname>
                            <given-names>A</given-names>
                        </name>
</person-group>:
                    <article-title>Stock market interlinkages among the BRIC economies.</article-title>
                    <source>

                        <italic toggle="yes">Int. J. Ethics Syst.</italic>
</source>
                    <year>2019</year>;<volume>35</volume>(<issue>1</issue>):<fpage>59</fpage>&#x2013;<lpage>74</lpage>.
                    <pub-id pub-id-type="doi">10.1108/IJOES-04-2018-0064</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref3">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Ahmad</surname>
                            <given-names>KM</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Ashraf</surname>
                            <given-names>S</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Ahmed</surname>
                            <given-names>S</given-names>
                        </name>
</person-group>:
                    <article-title>Is the Indian Stock Market Integrated with the US and Japanese Markets?: An Empirical Analysis.</article-title>
                    <source>

                        <italic toggle="yes">South Asia Econ. J.</italic>
</source>
                    <year>2005</year>;<volume>6</volume>(<issue>2</issue>):<fpage>193</fpage>&#x2013;<lpage>206</lpage>.
                    <pub-id pub-id-type="doi">10.1177/139156140500600202</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref4">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Akaike</surname>
                            <given-names>H</given-names>
                        </name>
</person-group>:
                    <article-title>A new look at the statistical model identification.</article-title>
                    <source>

                        <italic toggle="yes">IEEE Trans. Autom. Control.</italic>
</source>
                    <year>1974</year>;<volume>19</volume>(<issue>6</issue>):<fpage>716</fpage>&#x2013;<lpage>723</lpage>.
                    <pub-id pub-id-type="doi">10.1109/TAC.1974.1100705</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref84">
                <mixed-citation publication-type="data">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Ali</surname>
                            <given-names>F</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Suri</surname>
                            <given-names>P</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Kaur</surname>
                            <given-names>T</given-names>
                        </name>

                        <etal/>
</person-group>:
                    <data-title>"Cointegration and causality relationship of Indian stock market with selected world markets"Table 17 Variance Decomposition of RNSE.pdf. figshare.</data-title>[Dataset].<year>2024</year>.
                    <pub-id pub-id-type="doi">10.6084/m9.figshare.26373988.v1</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref5">
                <mixed-citation publication-type="other">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Ali</surname>
                            <given-names>F</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Suri</surname>
                            <given-names>P</given-names>
                            <prefix>Dr.</prefix>
                        </name>

                        <name name-style="western">
                            <surname>Kaur</surname>
                            <given-names>T</given-names>
                            <prefix>Dr.</prefix>
                        </name>

                        <etal/>
</person-group>:
                    <article-title>Cointegration and Causality Relationship. figshare. Dataset.</article-title>
                    <year>2022</year>.
                    <pub-id pub-id-type="doi">10.6084/m9.figshare.20263803.v2</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref6">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Aloui</surname>
                            <given-names>R</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Gupta</surname>
                            <given-names>R</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Miller</surname>
                            <given-names>SM</given-names>
                        </name>
</person-group>:
                    <article-title>Uncertainty and crude oil returns.</article-title>
                    <source>

                        <italic toggle="yes">Energy Econ.</italic>
</source>
                    <year>2016</year>;<volume>55</volume>:<fpage>92</fpage>&#x2013;<lpage>100</lpage>.
                    <pub-id pub-id-type="doi">10.1016/j.eneco.2016.01.012</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref72">
                <mixed-citation publication-type="book">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Bekaert</surname>
                            <given-names>G</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Harvey</surname>
                            <given-names>CR</given-names>
                        </name>
</person-group>:
                    <source>

                        <italic toggle="yes">Market integration and contagion.</italic>
</source>
                    <publisher-name>Willey</publisher-name>;<year>2003</year>.</mixed-citation>
            </ref>
            <ref id="ref73">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Bekaert</surname>
                            <given-names>G</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Harvey</surname>
                            <given-names>CR</given-names>
                        </name>
</person-group>:
                    <article-title>Time-varying world market integration.</article-title>
                    <source>

                        <italic toggle="yes">J. Finance.</italic>
                    </source>
                    <year>1995</year>;<volume>50</volume>(<issue>2</issue>):<fpage>403</fpage>&#x2013;<lpage>444</lpage>.
                    <pub-id pub-id-type="doi">10.1111/j.1540-6261.1995.tb04790.x</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref7">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>BELCIUG</surname>
                            <given-names>S</given-names>
                        </name>

                        <name name-style="western">
                            <surname>S&#x0102;NDI&#x021a;&#x0102;</surname>
                            <given-names>A</given-names>
                        </name>

                        <name name-style="western">
                            <surname>COSTIN</surname>
                            <given-names>H</given-names>
                        </name>

                        <etal/>
</person-group>:
                    <article-title>Competitive/Collaborative Statistical Learning Framework for Forecasting Intraday Stock Market Prices: A Case Study.</article-title>
                    <source>

                        <italic toggle="yes">Stud. Inform. Control.</italic>
</source>
                    <year>2021</year>;<volume>30</volume>(<issue>2</issue>):<fpage>43</fpage>&#x2013;<lpage>54</lpage>.
                    <pub-id pub-id-type="doi">10.24846/v30i2y202104</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref8">
                <mixed-citation publication-type="other">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Bir</surname>
                            <given-names>R</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Trivedi</surname>
                            <given-names>J</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Antonescu</surname>
                            <given-names>M</given-names>
                        </name>
</person-group>:
                    <article-title>Modelling S &amp; P Bombay Stock Exchange BANKEX Index Volatility Patterns Using GARCH Model.</article-title>
                    <source>

                        <italic toggle="yes">Procedia Econ. Financ.</italic>
</source>
                    <year>2015</year>;<volume>32</volume>(<issue>15</issue>):<fpage>520</fpage>&#x2013;<lpage>525</lpage>.
                    <pub-id pub-id-type="doi">10.1016/S2212-5671(15)01427-6</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref9">
                <mixed-citation publication-type="other">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Biswas</surname>
                            <given-names>M</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Nova</surname>
                            <given-names>AJ</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Mahbub</surname>
                            <given-names>MK</given-names>
                        </name>

                        <etal/>
</person-group>:
                    <article-title>Stock Market Prediction: A Survey and Evaluation.</article-title>
                    <source>

                        <italic toggle="yes">2021 International Conference on Science &amp; Contemporary Technologies (ICSCT).</italic>
</source>
                    <year>2021</year>;<fpage>1</fpage>&#x2013;<lpage>6</lpage>.</mixed-citation>
            </ref>
            <ref id="ref10">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Boako</surname>
                            <given-names>G</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Alagidede</surname>
                            <given-names>P</given-names>
                        </name>
</person-group>:
                    <article-title>African stock markets in the midst of the global financial crisis: Recoupling or decoupling?</article-title>
                    <source>

                        <italic toggle="yes">Res. Int. Bus. Financ.</italic>
</source>
                    <year>2018</year>;<volume>46</volume>:<fpage>166</fpage>&#x2013;<lpage>180</lpage>.
                    <pub-id pub-id-type="doi">10.1016/j.ribaf.2018.02.001</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref11">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Bouri</surname>
                            <given-names>E</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Jain</surname>
                            <given-names>A</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Biswal</surname>
                            <given-names>PC</given-names>
                        </name>

                        <etal/>
</person-group>:
                    <article-title>Cointegration and nonlinear causality amongst gold, oil, and the Indian stock market: Evidence from implied volatility indices.</article-title>
                    <source>

                        <italic toggle="yes">Res. Policy.</italic>
</source>
                    <year>2017</year>;<volume>52</volume>(<issue>November 2016</issue>):<fpage>201</fpage>&#x2013;<lpage>206</lpage>.
                    <pub-id pub-id-type="doi">10.1016/j.resourpol.2017.03.003</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref12">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Caporale</surname>
                            <given-names>GM</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Gil-Alana</surname>
                            <given-names>LA</given-names>
                        </name>

                        <name name-style="western">
                            <surname>You</surname>
                            <given-names>K</given-names>
                        </name>
</person-group>:
                    <article-title>Stock Market Linkages between the Asean Countries, China and the US: A Fractional Integration/cointegration Approach.</article-title>
                    <source>

                        <italic toggle="yes">Emerg. Mark. Financ. Trade.</italic>
</source>
                    <year>2021</year>;<fpage>1</fpage>&#x2013;<lpage>14</lpage>.
                    <pub-id pub-id-type="doi">10.1080/1540496X.2021.1898366</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref74">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Carrieri</surname>
                            <given-names>F</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Errunza</surname>
                            <given-names>V</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Hogan</surname>
                            <given-names>K</given-names>
                        </name>
</person-group>:
                    <article-title>Characterizing world market integration through time.</article-title>
                    <source>

                        <italic toggle="yes">J. Financ. Quant. Anal.</italic>
                    </source>
                    <year>2007</year>;<volume>42</volume>(<issue>4</issue>):<fpage>915</fpage>&#x2013;<lpage>940</lpage>.
                    <pub-id pub-id-type="doi">10.1017/S0022109000003446</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref75">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Can Inci</surname>
                            <given-names>A</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Li</surname>
                            <given-names>HC</given-names>
                        </name>

                        <name name-style="western">
                            <surname>McCarthy</surname>
                            <given-names>J</given-names>
                        </name>
</person-group>:
                    <article-title>Measuring flight to quality: a local correlation analysis.</article-title>
                    <source>

                        <italic toggle="yes">Rev. Account. Finance.</italic>
                    </source>
                    <year>2011</year>;<volume>10</volume>(<issue>1</issue>):<fpage>69</fpage>&#x2013;<lpage>87</lpage>.
                    <pub-id pub-id-type="doi">10.1108/14757701111113820</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref13">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Chen</surname>
                            <given-names>S</given-names>
                        </name>
</person-group>:
                    <article-title>Correlation analysis of financial indicators and stock price fluctuations based on artificial intelligence system.</article-title>
                    <source>

                        <italic toggle="yes">2021 International Conference on Artificial Intelligence and Smart Systems (ICAIS).</italic>
</source>
                    <year>2021</year>;<fpage>43</fpage>&#x2013;<lpage>46</lpage>.</mixed-citation>
            </ref>
            <ref id="ref14">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Cheng</surname>
                            <given-names>T</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Liu</surname>
                            <given-names>J</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Yao</surname>
                            <given-names>W</given-names>
                        </name>

                        <etal/>
</person-group>:
                    <article-title>The impact of COVID-19 pandemic on the volatility connectedness network of global stock market.</article-title>
                    <source>

                        <italic toggle="yes">Pac. Basin Financ. J.</italic>
</source>
                    <year>2021</year>;<fpage>101678</fpage>.</mixed-citation>
            </ref>
            <ref id="ref15">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Choudhary</surname>
                            <given-names>S</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Singhal</surname>
                            <given-names>S</given-names>
                        </name>
</person-group>:
                    <article-title>International linkages of Indian equity market: evidence from panel co-integration approach.</article-title>
                    <source>

                        <italic toggle="yes">J. Asset Manag.</italic>
</source>
                    <year>2020</year>;<volume>21</volume>(<issue>4</issue>):<fpage>333</fpage>&#x2013;<lpage>341</lpage>.
                    <pub-id pub-id-type="doi">10.1057/s41260-020-00165-2</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref16">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Chuli&#x00e1;</surname>
                            <given-names>H</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Pinchao</surname>
                            <given-names>AD</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Uribe</surname>
                            <given-names>JM</given-names>
                        </name>
</person-group>:
                    <article-title>Risk Synchronization in International Stock Markets.</article-title>
                    <source>

                        <italic toggle="yes">Glob. Econ. Rev.</italic>
</source>
                    <year>2018</year>;<volume>47</volume>(<issue>2</issue>):<fpage>135</fpage>&#x2013;<lpage>150</lpage>.
                    <pub-id pub-id-type="doi">10.1080/1226508X.2017.1407952</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref17">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Cui</surname>
                            <given-names>H</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Zhang</surname>
                            <given-names>Y</given-names>
                        </name>
</person-group>:
                    <article-title>Does investor sentiment affect stock price crash risk?</article-title>
                    <source>

                        <italic toggle="yes">Appl. Econ. Lett.</italic>
</source>
                    <year>2020</year>;<volume>27</volume>(<issue>7</issue>):<fpage>564</fpage>&#x2013;<lpage>568</lpage>.
                    <pub-id pub-id-type="doi">10.1080/13504851.2019.1643448</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref79">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Daly</surname>
                            <given-names>KJ</given-names>
                        </name>
</person-group>:
                    <article-title>Southeast Asian stock market linkages: evidence from pre-and post-October 1997.</article-title>
                    <source>

                        <italic toggle="yes">ASEAN Econ. Bull.</italic>
                    </source>
                    <year>2003</year>;<volume>20</volume>(<issue>1</issue>):<fpage>73</fpage>&#x2013;<lpage>85</lpage>.
                    <pub-id pub-id-type="doi">10.1355/AE20-1F</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref18">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Dhall</surname>
                            <given-names>R</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Singh</surname>
                            <given-names>B</given-names>
                        </name>
</person-group>:
                    <article-title>The COVID-19 Pandemic and Herding Behaviour: Evidence from India&#x2019;s Stock Market.</article-title>
                    <source>

                        <italic toggle="yes">Millennial Asia.</italic>
</source>
                    <year>2020</year>;<volume>11</volume>(<issue>3</issue>):<fpage>366</fpage>&#x2013;<lpage>390</lpage>.
                    <pub-id pub-id-type="doi">10.1177/0976399620964635</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref19">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Ding</surname>
                            <given-names>C</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Wang</surname>
                            <given-names>HJ</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Lee</surname>
                            <given-names>MC</given-names>
                        </name>

                        <etal/>
</person-group>:
                    <article-title>How does the change in investor sentiment over time affect stock returns?</article-title>
                    <source>

                        <italic toggle="yes">Emerg. Mark. Financ. Trade.</italic>
</source>
                    <year>2014</year>;<volume>50</volume>(<issue>SUPPL. 2</issue>):<fpage>144</fpage>&#x2013;<lpage>158</lpage>.
                    <pub-id pub-id-type="doi">10.2753/REE1540-496X5002S210</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref20">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Elyasiani</surname>
                            <given-names>E</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Gambarelli</surname>
                            <given-names>L</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Muzzioli</surname>
                            <given-names>S</given-names>
                        </name>
</person-group>:
                    <article-title>The skewness index: uncovering the relationship with volatility and market returns.</article-title>
                    <source>

                        <italic toggle="yes">Appl. Econ.</italic>
</source>
                    <year>2021</year>;<volume>53</volume>(<issue>31</issue>):<fpage>3619</fpage>&#x2013;<lpage>3635</lpage>.
                    <pub-id pub-id-type="doi">10.1080/00036846.2021.1884837</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref21">
                <mixed-citation publication-type="other">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Engle</surname>
                            <given-names>RF</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Granger</surname>
                            <given-names>CWJ</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Engle</surname>
                            <given-names>BYRF</given-names>
                        </name>

                        <etal/>
</person-group>:
                    <source>

                        <italic toggle="yes">Co-Integration and Error Correction: Representation, Estimation, and Testing Published by: The Econometric Society Stable.</italic>
</source>
                    <year>1987</year>;<volume>55</volume>(<issue>2</issue>):<fpage>251</fpage>&#x2013;<lpage>276</lpage>.
                    <ext-link ext-link-type="uri" xlink:href="https://www.jstor.org/stable/1913236">Reference Source</ext-link>
                </mixed-citation>
            </ref>
            <ref id="ref22">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Ezeibekwe</surname>
                            <given-names>OF</given-names>
                        </name>
</person-group>:
                    <article-title>Stock Market Development and Economic Growth in Nigeria: Evidence from Vector Error Correction Model.</article-title>
                    <source>

                        <italic toggle="yes">J. Dev. Areas.</italic>
</source>
                    <year>2021</year>;<volume>55</volume>(<issue>4</issue>):<fpage>103</fpage>&#x2013;<lpage>118</lpage>.
                    <pub-id pub-id-type="doi">10.1353/jda.2021.0081</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref23">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Fang</surname>
                            <given-names>L</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Qian</surname>
                            <given-names>Y</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Chen</surname>
                            <given-names>Y</given-names>
                        </name>

                        <etal/>
</person-group>:
                    <article-title>How does stock market volatility react to NVIX ? Evidence from developed countries.</article-title>
                    <source>

                        <italic toggle="yes">Physica A.</italic>
</source>
                    <year>2018</year>;<volume>505</volume>:<fpage>490</fpage>&#x2013;<lpage>499</lpage>.
                    <pub-id pub-id-type="doi">10.1016/j.physa.2018.03.039</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref24">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Fang</surname>
                            <given-names>T</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Lee</surname>
                            <given-names>T</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Su</surname>
                            <given-names>Z</given-names>
                        </name>
</person-group>:
                    <article-title>Jou rna lP.</article-title>
                    <source>

                        <italic toggle="yes">J. Empir. Financ.</italic>
</source>
                    <year>2020</year>.
                    <pub-id pub-id-type="doi">10.1016/j.jempfin.2020.05.007</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref76">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Foerster</surname>
                            <given-names>SR</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Karolyi</surname>
                            <given-names>GA</given-names>
                        </name>
</person-group>:
                    <article-title>The effects of market segmentation and investor recognition on asset prices: Evidence from foreign stocks listing in the United States.</article-title>
                    <source>

                        <italic toggle="yes">J. Finance.</italic>
                    </source>
                    <year>1999</year>;<volume>54</volume>(<issue>3</issue>):<fpage>981</fpage>&#x2013;<lpage>1013</lpage>.
                    <pub-id pub-id-type="doi">10.1111/0022-1082.00134</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref25">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Garg</surname>
                            <given-names>A</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Gulati</surname>
                            <given-names>R</given-names>
                        </name>
</person-group>:
                    <article-title>Do investors herd in Indian market.</article-title>
                    <source>

                        <italic toggle="yes">Decision.</italic>
</source>
                    <year>2013</year>;<volume>40</volume>(<issue>3</issue>):<fpage>181</fpage>&#x2013;<lpage>196</lpage>.
                    <pub-id pub-id-type="doi">10.1007/s40622-013-0015-z</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref83">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Golder</surname>
                            <given-names>U</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Islam</surname>
                            <given-names>MN</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Kayser</surname>
                            <given-names>MS</given-names>
                        </name>
</person-group>:
                    <article-title>Impact of foreign exchange reserve, exchange rate and crude oil price on Dhaka stock exchange index: Empirical evidence from vector error correction model.</article-title>
                    <source>

                        <italic toggle="yes">Indian J. Financ. Bank.</italic>
                    </source>
                    <year>2020</year>;<volume>4</volume>(<issue>1</issue>):<fpage>134</fpage>&#x2013;<lpage>143</lpage>.</mixed-citation>
            </ref>
            <ref id="ref26">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Goudarzi</surname>
                            <given-names>H</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Ramanarayanan</surname>
                            <given-names>CS</given-names>
                        </name>
</person-group>:
                    <article-title>Empirical Analysis of the Impact of Foreign Institutional Investment on the Indian Stock Market Volatility during World Financial Crisis 2008-09.</article-title>
                    <source>

                        <italic toggle="yes">Int. J. Econ. Financ.</italic>
</source>
                    <year>2011</year>;<volume>3</volume>(<issue>3</issue>):<fpage>214</fpage>&#x2013;<lpage>226</lpage>.
                    <pub-id pub-id-type="doi">10.5539/ijef.v3n3p214</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref27">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Guyon</surname>
                            <given-names>J</given-names>
                        </name>
</person-group>:
                    <article-title>Path-Dependent Volatility.</article-title>
                    <source>

                        <italic toggle="yes">SSRN Electron. J.</italic>
</source>
                    <year>2014</year>;<fpage>1</fpage>&#x2013;<lpage>12</lpage>.
                    <pub-id pub-id-type="doi">10.2139/ssrn.2425048</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref28">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>H&#x00e4;rdle</surname>
                            <given-names>WK</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Hautsch</surname>
                            <given-names>N</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Mihoci</surname>
                            <given-names>A</given-names>
                        </name>
</person-group>:
                    <article-title>Local adaptive multiplicative error models for high-frequency forecasts.</article-title>
                    <source>

                        <italic toggle="yes">J. Appl. Econ.</italic>
</source>
                    <year>2015</year>;<volume>30</volume>(<issue>4</issue>):<fpage>529</fpage>&#x2013;<lpage>550</lpage>.
                    <pub-id pub-id-type="doi">10.1002/jae.2376</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref29">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>He</surname>
                            <given-names>F</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Liu-Chen</surname>
                            <given-names>B</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Meng</surname>
                            <given-names>X</given-names>
                        </name>

                        <etal/>
</person-group>:
                    <article-title>Price discovery and spillover dynamics in the Chinese stock index futures market: a natural experiment on trading volume restriction.</article-title>
                    <source>

                        <italic toggle="yes">Quant. Finance.</italic>
</source>
                    <year>2020</year>;<volume>20</volume>(<issue>12</issue>):<fpage>2067</fpage>&#x2013;<lpage>2083</lpage>.
                    <pub-id pub-id-type="doi">10.1080/14697688.2020.1814037</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref77">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Hoque</surname>
                            <given-names>HA</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Kim</surname>
                            <given-names>JH</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Pyun</surname>
                            <given-names>CS</given-names>
                        </name>
</person-group>:
                    <article-title>A comparison of variance ratio tests of random walk: A case of Asian emerging stock markets.</article-title>
                    <source>

                        <italic toggle="yes">Int. Rev. Econ. Finance.</italic>
                    </source>
                    <year>2007</year>;<volume>16</volume>(<issue>4</issue>):<fpage>488</fpage>&#x2013;<lpage>502</lpage>.
                    <pub-id pub-id-type="doi">10.1016/j.iref.2006.01.001</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref30">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Huang</surname>
                            <given-names>Z</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Tang</surname>
                            <given-names>Q</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Huang</surname>
                            <given-names>S</given-names>
                        </name>
</person-group>:
                    <article-title>Foreign investors and stock price crash risk: Evidence from China.</article-title>
                    <source>

                        <italic toggle="yes">Econ. Anal. Policy.</italic>
</source>
                    <year>2020</year>;<volume>68</volume>:<fpage>210</fpage>&#x2013;<lpage>223</lpage>.
                    <pub-id pub-id-type="pmid">33012961</pub-id>
                    <pub-id pub-id-type="doi">10.1016/j.eap.2020.09.016</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref82">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Jain</surname>
                            <given-names>A</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Biswal</surname>
                            <given-names>PC</given-names>
                        </name>
</person-group>:
                    <article-title>Dynamic linkages among oil price, gold price, exchange rate, and stock market in India.</article-title>
                    <source>

                        <italic toggle="yes">Resour. Policy.</italic>
                    </source>
                    <year>2016</year>;<volume>49</volume>:<fpage>179</fpage>&#x2013;<lpage>185</lpage>.
                    <pub-id pub-id-type="doi">10.1016/j.resourpol.2016.06.001</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref31">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Kanjilal</surname>
                            <given-names>K</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Ghosh</surname>
                            <given-names>S</given-names>
                        </name>
</person-group>:
                    <article-title>Dynamics of crude oil and gold price post 2008 global financial crisis &#x2013; New evidence from threshold vector error-correction model.</article-title>
                    <source>

                        <italic toggle="yes">Res. Policy.</italic>
</source>
                    <year>2017</year>;<volume>52</volume>(<issue>March</issue>):<fpage>358</fpage>&#x2013;<lpage>365</lpage>.
                    <pub-id pub-id-type="doi">10.1016/j.resourpol.2017.04.001</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref32">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Kapoor</surname>
                            <given-names>V</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Dey</surname>
                            <given-names>S</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Khurana</surname>
                            <given-names>AP</given-names>
                        </name>
</person-group>:
                    <article-title>Modeling the influence of world stock markets on Indian NSE index.</article-title>
                    <source>

                        <italic toggle="yes">J. Stat. Manag. Syst.</italic>
</source>
                    <year>2020</year>;<volume>23</volume>(<issue>2</issue>):<fpage>249</fpage>&#x2013;<lpage>261</lpage>.
                    <pub-id pub-id-type="doi">10.1080/09720510.2020.1734297</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref33">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Karkowska</surname>
                            <given-names>R</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Urjasz</surname>
                            <given-names>S</given-names>
                        </name>
</person-group>:
                    <article-title>Connectedness structures of sovereign bond markets in Central and Eastern Europe.</article-title>
                    <source>

                        <italic toggle="yes">Int. Rev. Financ. Anal.</italic>
</source>
                    <year>2021</year>;<volume>74</volume>(<issue>June 2020</issue>):<fpage>101644</fpage>.
                    <pub-id pub-id-type="doi">10.1016/j.irfa.2020.101644</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref34">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Kartal</surname>
                            <given-names>MT</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Ayhan</surname>
                            <given-names>F</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Kirikkaleli</surname>
                            <given-names>D</given-names>
                        </name>
</person-group>:
                    <article-title>Regime-switching effect of COVID-19 pandemic on stock market index: evidence from Turkey as an emerging market example.</article-title>
                    <source>

                        <italic toggle="yes">Macroeconomics and Finance in Emerging Market Economies.</italic>
</source>
                    <year>2022</year>;<fpage>1</fpage>&#x2013;<lpage>18</lpage>.
                    <pub-id pub-id-type="doi">10.1080/17520843.2022.2091825</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref35">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Khaing</surname>
                            <given-names>ET</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Thein</surname>
                            <given-names>MM</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Lwin</surname>
                            <given-names>MM</given-names>
                        </name>
</person-group>:
                    <article-title>Enhance Trend Extraction Results by Refining with Additional Criteria.</article-title>
                    <source>

                        <italic toggle="yes">International Conference on Computational Collective Intelligence.</italic>
</source>
                    <year>2020</year>;<fpage>777</fpage>&#x2013;<lpage>788</lpage>.
                    <pub-id pub-id-type="doi">10.1007/978-3-030-63119-2_63</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref36">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Kumar</surname>
                            <given-names>G</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Misra</surname>
                            <given-names>AK</given-names>
                        </name>
</person-group>:
                    <article-title>Long run commonality in Indian stocks: empirical evidence from national stock exchange of India.</article-title>
                    <source>

                        <italic toggle="yes">J. Indian Bus. Res.</italic>
</source>
                    <year>2020</year>;<volume>12</volume>(<issue>4</issue>):<fpage>441</fpage>&#x2013;<lpage>458</lpage>.
                    <pub-id pub-id-type="doi">10.1108/JIBR-09-2016-0091</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref37">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Kumar</surname>
                            <given-names>S</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Choudhary</surname>
                            <given-names>S</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Singh</surname>
                            <given-names>G</given-names>
                        </name>

                        <etal/>
</person-group>:
                    <article-title>Crude oil, gold, natural gas, exchange rate and indian stock market: Evidence from the asymmetric nonlinear ARDL model.</article-title>
                    <source>

                        <italic toggle="yes">Res. Policy.</italic>
</source>
                    <year>2021</year>;<volume>73</volume>(<issue>June</issue>):<fpage>102194</fpage>.
                    <pub-id pub-id-type="doi">10.1016/j.resourpol.2021.102194</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref38">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Kumari</surname>
                            <given-names>J</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Mahakud</surname>
                            <given-names>J</given-names>
                        </name>
</person-group>:
                    <article-title>Investor Sentiment and Stock Market Volatility: Evidence from India.</article-title>
                    <source>

                        <italic toggle="yes">J. Asia Pac. Bus.</italic>
</source>
                    <year>2016</year>;<volume>17</volume>(<issue>2</issue>):<fpage>173</fpage>&#x2013;<lpage>202</lpage>.
                    <pub-id pub-id-type="doi">10.1080/10599231.2016.1166024</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref39">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Lai</surname>
                            <given-names>HC</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Tseng</surname>
                            <given-names>TC</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Huang</surname>
                            <given-names>SC</given-names>
                        </name>
</person-group>:
                    <article-title>Combining value averaging and Bollinger Band for an ETF trading strategy.</article-title>
                    <source>

                        <italic toggle="yes">Appl. Econ.</italic>
</source>
                    <year>2016</year>;<volume>48</volume>(<issue>37</issue>):<fpage>3550</fpage>&#x2013;<lpage>3557</lpage>.
                    <pub-id pub-id-type="doi">10.1080/00036846.2016.1142653</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref40">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Li</surname>
                            <given-names>H</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Wang</surname>
                            <given-names>S</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Shang</surname>
                            <given-names>W</given-names>
                        </name>
</person-group>:
                    <article-title>Heterogeneity, nonlinearity and endogenous market volatility.</article-title>
                    <source>

                        <italic toggle="yes">J. Syst. Sci. Complex.</italic>
</source>
                    <year>2011</year>;<volume>24</volume>(<issue>6</issue>):<fpage>1130</fpage>&#x2013;<lpage>1142</lpage>.
                    <pub-id pub-id-type="doi">10.1007/s11424-011-9054-8</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref41">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Lorenz</surname>
                            <given-names>E</given-names>
                        </name>
</person-group>:
                    <article-title>The butterfly effect.</article-title>
                    <source>

                        <italic toggle="yes">World Scientific Series on Nonlinear Science Series A.</italic>
</source>
                    <year>2000</year>;<volume>39</volume>:<fpage>91</fpage>&#x2013;<lpage>94</lpage>.</mixed-citation>
            </ref>
            <ref id="ref42">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Ly&#x00f3;csa</surname>
                            <given-names>&#x0160;</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Moln&#x00e1;r</surname>
                            <given-names>P</given-names>
                        </name>
</person-group>:
                    <article-title>Stock market oscillations during the corona crash: The role of fear and uncertainty.</article-title>
                    <source>

                        <italic toggle="yes">Financ. Res. Lett.</italic>
</source>
                    <year>2020</year>;<volume>36</volume>:<fpage>101707</fpage>.
                    <pub-id pub-id-type="doi">10.1016/j.frl.2020.101707</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref80">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>MacKinnon</surname>
                            <given-names>JG</given-names>
                        </name>
</person-group>:
                    <article-title>Numerical distribution functions for unit root and cointegration tests.</article-title>
                    <source>

                        <italic toggle="yes">J. Appl. Econom.</italic>
                    </source>
                    <year>1996</year>;<volume>11</volume>(<issue>6</issue>):<fpage>601</fpage>&#x2013;<lpage>618</lpage>.
                    <pub-id pub-id-type="doi">10.1002/(SICI)1099-1255(199611)11:6&lt;601::AID-JAE417&gt;3.0.CO;2-T</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref43">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>MacKinnon</surname>
                            <given-names>JG</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Haug</surname>
                            <given-names>AA</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Michelis</surname>
                            <given-names>L</given-names>
                        </name>
</person-group>:
                    <article-title>Numerical distribution functions of likelihood ratio tests for cointegration.</article-title>
                    <source>

                        <italic toggle="yes">J. Appl. Econ.</italic>
</source>
                    <year>1999</year>;<volume>14</volume>(<issue>5</issue>):<fpage>563</fpage>&#x2013;<lpage>577</lpage>.
                    <pub-id pub-id-type="doi">10.1002/(SICI)1099-1255(199909/10)14:5&lt;563::AID-JAE530&gt;3.0.CO;2-R</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref44">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Mahalingam</surname>
                            <given-names>G</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Selvam</surname>
                            <given-names>M</given-names>
                        </name>
</person-group>:
                    <article-title>Stock Market Reaction during the Global Financial Crisis in India: Fractal Analysis.</article-title>
                    <source>

                        <italic toggle="yes">Asia-Pac. J. Manag. Res. Innov.</italic>
</source>
                    <year>2014</year>;<volume>10</volume>(<issue>4</issue>):<fpage>403</fpage>&#x2013;<lpage>412</lpage>.
                    <pub-id pub-id-type="doi">10.1177/2319510x14553724</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref45">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Mandelbrot</surname>
                            <given-names>B</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Taylor</surname>
                            <given-names>HM</given-names>
                        </name>
</person-group>:
                    <article-title>On the distribution of stock price differences.</article-title>
                    <source>

                        <italic toggle="yes">Oper. Res.</italic>
</source>
                    <year>1967</year>;<volume>15</volume>(<issue>6</issue>):<fpage>1057</fpage>&#x2013;<lpage>1062</lpage>.
                    <pub-id pub-id-type="doi">10.1287/opre.15.6.1057</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref46">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Menon</surname>
                            <given-names>NR</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Subha</surname>
                            <given-names>MV</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Sagaran</surname>
                            <given-names>S</given-names>
                        </name>
</person-group>:
                    <article-title>Cointegration of Indian stock markets with other leading stock markets.</article-title>
                    <source>

                        <italic toggle="yes">Stud. Econ. Financ.</italic>
</source>
                    <year>2009</year>;<volume>26</volume>(<issue>2</issue>):<fpage>87</fpage>&#x2013;<lpage>94</lpage>.
                    <pub-id pub-id-type="doi">10.1108/10867370910963028</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref47">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Mukherjee</surname>
                            <given-names>P</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Bose</surname>
                            <given-names>S</given-names>
                        </name>
</person-group>:
                    <article-title>Does the stock market in India move with Asia? A multivariate cointegration-vector autoregression approach.</article-title>
                    <source>

                        <italic toggle="yes">Emerg. Mark. Financ. Trade.</italic>
</source>
                    <year>2008</year>;<volume>44</volume>(<issue>5</issue>):<fpage>5</fpage>&#x2013;<lpage>22</lpage>.
                    <pub-id pub-id-type="doi">10.2753/REE1540-496X440501</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref48">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Muthukumaran</surname>
                            <given-names>T</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Raja</surname>
                            <given-names>AS</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Palanichamy</surname>
                            <given-names>P</given-names>
                        </name>
</person-group>:
                    <article-title>Impact of Global Financial Crisis on Indian Stock Market &#x2014; An Analytical Study.</article-title>
                    <source>

                        <italic toggle="yes">Asia Pac. Bus. Rev.</italic>
</source>
                    <year>2011</year>;<volume>7</volume>(<issue>2</issue>):<fpage>5</fpage>&#x2013;<lpage>12</lpage>.
                    <pub-id pub-id-type="doi">10.1177/097324701100700201</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref49">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Naik</surname>
                            <given-names>N</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Mohan</surname>
                            <given-names>BR</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Jha</surname>
                            <given-names>RA</given-names>
                        </name>
</person-group>:
                    <article-title>GARCH Model Identification for Stock Crises Events.</article-title>
                    <source>

                        <italic toggle="yes">Procedia Computer Science.</italic>
</source>
                    <year>2020</year>;<volume>171</volume>(<issue>2019</issue>):<fpage>1742</fpage>&#x2013;<lpage>1749</lpage>.
                    <pub-id pub-id-type="doi">10.1016/j.procs.2020.04.187</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref50">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Nandy</surname>
                            <given-names>S</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Chattopadhyay</surname>
                            <given-names>AK</given-names>
                        </name>
</person-group>:
                    <article-title>&#x2018;Indian Stock Market Volatility&#x2019;: A Study of Inter-linkages and Spillover Effects.</article-title>
                    <source>

                        <italic toggle="yes">J. Emerg. Mark. Finance.</italic>
</source>
                    <year>2019</year>;<volume>18</volume>(<issue>2_suppl</issue>):<fpage>S183</fpage>&#x2013;<lpage>S212</lpage>.
                    <pub-id pub-id-type="doi">10.1177/0972652719846321</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref51">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Narasimha</surname>
                            <given-names>V</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Mushinada</surname>
                            <given-names>C</given-names>
                        </name>
</person-group>:
                    <article-title>Journal of Behavioral and Experimental Finance Are individual investors irrational or adaptive to market dynamics?</article-title>
                    <source>

                        <italic toggle="yes">J. Behav. Exp. Financ.</italic>
</source>
                    <year>2020</year>;<volume>25</volume>:<fpage>100243</fpage>.
                    <pub-id pub-id-type="doi">10.1016/j.jbef.2019.100243</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref52">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Narayan</surname>
                            <given-names>S</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Sriananthakumar</surname>
                            <given-names>S</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Islam</surname>
                            <given-names>SZ</given-names>
                        </name>
</person-group>:
                    <article-title>Stock market integration of emerging Asian economies: Patterns and causes.</article-title>
                    <source>

                        <italic toggle="yes">Econ. Model.</italic>
</source>
                    <year>2014</year>;<volume>39</volume>:<fpage>19</fpage>&#x2013;<lpage>31</lpage>.
                    <pub-id pub-id-type="doi">10.1016/j.econmod.2014.02.012</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref53">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Nayak</surname>
                            <given-names>A</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Pai</surname>
                            <given-names>MMM</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Pai</surname>
                            <given-names>RM</given-names>
                        </name>
</person-group>:
                    <article-title>Prediction Models for Indian Stock Market.</article-title>
                    <source>

                        <italic toggle="yes">Procedia Comput. Sci.</italic>
</source>
                    <year>2016</year>;<volume>89</volume>:<fpage>441</fpage>&#x2013;<lpage>449</lpage>.
                    <pub-id pub-id-type="doi">10.1016/j.procs.2016.06.096</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref54">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Nikkinen</surname>
                            <given-names>J</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Peltom&#x00e4;ki</surname>
                            <given-names>J</given-names>
                        </name>
</person-group>:
                    <article-title>Crash Fears and Stock Market Effects: Evidence From Web Searches and Printed News Articles.</article-title>
                    <source>

                        <italic toggle="yes">J. Behav. Financ.</italic>
</source>
                    <year>2020</year>;<volume>21</volume>(<issue>2</issue>):<fpage>117</fpage>&#x2013;<lpage>127</lpage>.
                    <pub-id pub-id-type="doi">10.1080/15427560.2019.1630125</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref55">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Rajwani</surname>
                            <given-names>S</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Mukherjee</surname>
                            <given-names>J</given-names>
                        </name>
</person-group>:
                    <article-title>Is the Indian stock market cointegrated with other Asian markets?</article-title>
                    <source>

                        <italic toggle="yes">Manag. Res. Rev.</italic>
</source>
                    <year>2013</year>;<volume>36</volume>(<issue>9</issue>):<fpage>899</fpage>&#x2013;<lpage>918</lpage>.
                    <pub-id pub-id-type="doi">10.1108/MRR-06-2012-0141</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref56">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Sahoo</surname>
                            <given-names>S</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Kumar</surname>
                            <given-names>S</given-names>
                        </name>
</person-group>:
                    <article-title>Existence of Cointegration between the Public and Private Bank Index: Evidence from Indian Capital Market.</article-title>
                    <source>

                        <italic toggle="yes">Adv. Decis. Sci.</italic>
</source>
                    <year>2021</year>;<volume>25</volume>(<issue>4</issue>):<fpage>152</fpage>&#x2013;<lpage>172</lpage>.
                    <pub-id pub-id-type="doi">10.47654/V25Y2021I4P152-172</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref57">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Salisu</surname>
                            <given-names>AA</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Gupta</surname>
                            <given-names>R</given-names>
                        </name>
</person-group>:
                    <article-title>Jo ur na l P re of.</article-title>
                    <source>

                        <italic toggle="yes">Glob. Financ. J.</italic>
</source>
                    <year>2020</year>;<fpage>100546</fpage>.
                    <pub-id pub-id-type="doi">10.1016/j.gfj.2020.100546</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref58">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Seth</surname>
                            <given-names>N</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Panda</surname>
                            <given-names>L</given-names>
                        </name>
</person-group>:
                    <article-title>Time-varying Correlation Between Indian Equity Market and Selected Asian and US Stock Markets.</article-title>
                    <source>

                        <italic toggle="yes">Glob. Bus. Rev.</italic>
</source>
                    <year>2020</year>;<volume>21</volume>(<issue>6</issue>):<fpage>1354</fpage>&#x2013;<lpage>1375</lpage>.
                    <pub-id pub-id-type="doi">10.1177/0972150919856962</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref59">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Shaikh</surname>
                            <given-names>I</given-names>
                        </name>
</person-group>:
                    <article-title>On the relation between Pandemic Disease Outbreak News and Crude oil, Gold, Gold mining, Silver and Energy Markets.</article-title>
                    <source>

                        <italic toggle="yes">Res. Policy.</italic>
</source>
                    <year>2021</year>;<volume>72</volume>(<issue>March</issue>):<fpage>102025</fpage>.
                    <pub-id pub-id-type="pmid">34725530</pub-id>
                    <pub-id pub-id-type="doi">10.1016/j.resourpol.2021.102025</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref60">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Shantha</surname>
                            <given-names>KVA</given-names>
                        </name>
</person-group>:
                    <article-title>The evolution of herd behavior: Will herding disappear over time?</article-title>
                    <source>

                        <italic toggle="yes">Stud. Econ. Financ.</italic>
</source>
                    <year>2019</year>;<volume>36</volume>(<issue>3</issue>):<fpage>637</fpage>&#x2013;<lpage>661</lpage>.
                    <pub-id pub-id-type="doi">10.1108/SEF-06-2018-0175</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref61">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Siddiqui</surname>
                            <given-names>S</given-names>
                        </name>
</person-group>:
                    <article-title>Stock Markets Integration: Examining Linkages between Selected World Markets.</article-title>
                    <source>

                        <italic toggle="yes">Vision J. Bus. Perspect.</italic>
</source>
                    <year>2009</year>;<volume>13</volume>(<issue>1</issue>):<fpage>19</fpage>&#x2013;<lpage>30</lpage>.
                    <pub-id pub-id-type="doi">10.1177/097226290901300103</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref62">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Singh</surname>
                            <given-names>MK</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Neog</surname>
                            <given-names>Y</given-names>
                        </name>
</person-group>:
                    <article-title>Contagion effect of COVID-19 outbreak: Another recipe for disaster on Indian economy.</article-title>
                    <source>

                        <italic toggle="yes">J. Public Aff.</italic>
</source>
                    <year>2020</year>;<volume>20</volume>(<issue>4</issue>):<fpage>e2171</fpage>&#x2013;<lpage>e2178</lpage>.
                    <pub-id pub-id-type="pmid">32837319</pub-id>
                    <pub-id pub-id-type="doi">10.1002/pa.2171</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref63">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Song</surname>
                            <given-names>Y</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Huang</surname>
                            <given-names>R</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Paramati</surname>
                            <given-names>SR</given-names>
                        </name>

                        <etal/>
</person-group>:
                    <article-title>Does economic integration lead to financial market integration in the Asian region?</article-title>
                    <source>

                        <italic toggle="yes">Econ. Anal. Policy.</italic>
</source>
                    <year>2021</year>;<volume>69</volume>:<fpage>366</fpage>&#x2013;<lpage>377</lpage>.
                    <pub-id pub-id-type="doi">10.1016/j.eap.2020.12.003</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref64">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Stawiarski</surname>
                            <given-names>B</given-names>
                        </name>
</person-group>:
                    <article-title>Granger Causality and Cointegration During Stock Bubbles and Market Crashes.</article-title>
                    <source>

                        <italic toggle="yes">Workshop on Nonstationary Systems and Their Applications.</italic>
</source>
                    <year>2021</year>;<fpage>93</fpage>&#x2013;<lpage>107</lpage>.</mixed-citation>
            </ref>
            <ref id="ref81">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Tripathi</surname>
                            <given-names>V</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Sethi</surname>
                            <given-names>S</given-names>
                        </name>
</person-group>:
                    <article-title>Inter linkages of Indian stock market with advanced emerging markets.</article-title>
                    <source>

                        <italic toggle="yes">Asia-Pac. Finance Account. Rev.</italic>
                    </source>
                    <year>2012</year>;<volume>1</volume>(<issue>1</issue>):<fpage>34</fpage>&#x2013;<lpage>51</lpage>.</mixed-citation>
            </ref>
            <ref id="ref65">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Vo</surname>
                            <given-names>XV</given-names>
                        </name>
</person-group>:
                    <article-title>Foreign Investors and Stock Price Crash Risk: Evidence from Vietnam.</article-title>
                    <source>

                        <italic toggle="yes">Int. Rev. Financ.</italic>
</source>
                    <year>2020</year>;<volume>20</volume>(<issue>4</issue>):<fpage>993</fpage>&#x2013;<lpage>1004</lpage>.
                    <pub-id pub-id-type="doi">10.1111/irfi.12248</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref66">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Wang</surname>
                            <given-names>L</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Ma</surname>
                            <given-names>F</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Liu</surname>
                            <given-names>J</given-names>
                        </name>

                        <etal/>
</person-group>:
                    <article-title>Forecasting stock price volatility: New evidence from the GARCH-MIDAS model.</article-title>
                    <source>

                        <italic toggle="yes">Int. J. Forecast.</italic>
</source>
                    <year>2019</year>;<volume>36</volume>:<fpage>684</fpage>&#x2013;<lpage>694</lpage>.
                    <pub-id pub-id-type="doi">10.1016/j.ijforecast.2019.08.005</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref78">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Wong</surname>
                            <given-names>WK</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Agarwal</surname>
                            <given-names>A</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Du</surname>
                            <given-names>J</given-names>
                        </name>
</person-group>:
                    <article-title>Financial integration for India stock market, a fractional cointegration approach.</article-title>
                    <source>

                        <italic toggle="yes">National University of Singapore Working Paper No. WP0501.</italic>
                    </source>
                    <year>2005</year>.</mixed-citation>
            </ref>
            <ref id="ref67">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Xing</surname>
                            <given-names>K</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Yang</surname>
                            <given-names>X</given-names>
                        </name>
</person-group>:
                    <article-title>How to detect crashes before they burst: Evidence from Chinese stock market.</article-title>
                    <source>

                        <italic toggle="yes">Physica A: Statistical Mechanics and Its Applications.</italic>
</source>
                    <year>2019</year>;<volume>528</volume>(<issue>55</issue>):<fpage>121392</fpage>.
                    <pub-id pub-id-type="doi">10.1016/j.physa.2019.121392</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref68">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Yang</surname>
                            <given-names>J</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Kolari</surname>
                            <given-names>JW</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Min</surname>
                            <given-names>I</given-names>
                        </name>
</person-group>:
                    <article-title>Stock market integration and financial crises: The case of Asia.</article-title>
                    <source>

                        <italic toggle="yes">Appl. Financ. Econ.</italic>
</source>
                    <year>2003</year>;<volume>13</volume>(<issue>7</issue>):<fpage>477</fpage>&#x2013;<lpage>486</lpage>.
                    <pub-id pub-id-type="doi">10.1080/09603100210161965</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref69">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Yarovaya</surname>
                            <given-names>L</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Lau</surname>
                            <given-names>MCK</given-names>
                        </name>
</person-group>:
                    <article-title>Stock market comovements around the Global Financial Crisis: Evidence from the UK, BRICS and MIST markets.</article-title>
                    <source>

                        <italic toggle="yes">Res. Int. Bus. Financ.</italic>
</source>
                    <year>2016</year>;<volume>37</volume>:<fpage>605</fpage>&#x2013;<lpage>619</lpage>.
                    <pub-id pub-id-type="doi">10.1016/j.ribaf.2016.01.023</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref70">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Zhang</surname>
                            <given-names>W</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Hamori</surname>
                            <given-names>S</given-names>
                        </name>
</person-group>:
                    <article-title>International Review of Financial Analysis Crude oil market and stock markets during the COVID-19 pandemic: Evidence from the US, Japan, and Germany.</article-title>
                    <source>

                        <italic toggle="yes">Int. Rev. Financ. Anal.</italic>
</source>
                    <year>2021</year>;<volume>74</volume>(<issue>February</issue>):<fpage>101702</fpage>.
                    <pub-id pub-id-type="doi">10.1016/j.irfa.2021.101702</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref71">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Zhao</surname>
                            <given-names>S</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Chen</surname>
                            <given-names>X</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Zhang</surname>
                            <given-names>J</given-names>
                        </name>
</person-group>:
                    <article-title>The systemic risk of China&#x2019;s stock market during the crashes in 2008 and 2015.</article-title>
                    <source>

                        <italic toggle="yes">Physica A: Statistical Mechanics and Its Applications.</italic>
</source>
                    <year>2019</year>;<volume>520</volume>:<fpage>161</fpage>&#x2013;<lpage>177</lpage>.
                    <pub-id pub-id-type="doi">10.1016/j.physa.2019.01.006</pub-id>
                </mixed-citation>
            </ref>
        </ref-list>
        <fn-group content-type="footnotes">
            <fn id="fn1">
                <label>

                    <sup>1</sup>
                </label>
                <p>

                    <xref ref-type="bibr" rid="ref46">Menon 

                        <italic toggle="yes">et al.
</italic> (2009)</xref> hypothesize that the Indian equity market have insignificant causal relationship with the US and Japanese equity markets during the crisis period by adopting the &#x201c;Engle-Granger test&#x201d; of co-integration. 
                    <xref ref-type="bibr" rid="ref69">Yarovaya and Lau (2016)</xref> also examined the asymmetric causality test results supporting evidence of the coupling and decoupling hypothesis.</p>
            </fn>
            <fn id="fn2">
                <label>

                    <sup>2</sup>
                </label>
                <p>A long-term equilibrium relationship between security margin trading and systemic risk volatility demonstrated by the Johansen co-integration test (
                    <xref ref-type="bibr" rid="ref71">Zhao 
                        <italic toggle="yes">et al.</italic>, 2019</xref>). Johansen&#x2019;s cointegration test indicates an average relationship between the Indian and Shanghai stock markets and an especially strong relationship between the Indian and Singapore stock markets. A Granger causality test indicates that margin financing contributes to the volatility of systematic risk in a bear market.</p>
            </fn>
            <fn id="fn3">
                <label>

                    <sup>3</sup>
                </label>
                <p>

                    <xref ref-type="bibr" rid="ref47">Mukherjee and Bose (2008)</xref> posited cointegration, vector auto-regression, vector error-correction models, and Granger causality and found that the U.S. market leads all Asian markets in terms of information.</p>
            </fn>
        </fn-group>
    </back>
    <sub-article article-type="reviewer-report" id="report313924">
        <front-stub>
            <article-id pub-id-type="doi">10.5256/f1000research.169461.r313924</article-id>
            <title-group>
                <article-title>Reviewer response for version 4</article-title>
            </title-group>
            <contrib-group>
                <contrib contrib-type="author">
                    <name>
                        <surname>Golder</surname>
                        <given-names>Uttam</given-names>
                    </name>
                    <xref ref-type="aff" rid="r313924a1">1</xref>
                    <role>Referee</role>
                    <uri content-type="orcid">https://orcid.org/0000-0003-1302-838X</uri>
                </contrib>
                <aff id="r313924a1">
                    <label>1</label>Assistant Professor of Dept. of Finance and Banking, Jashore University of Science and Technology, Jessore District, Khulna Division, Bangladesh</aff>
            </contrib-group>
            <author-notes>
                <fn fn-type="conflict">
                    <p>
                        <bold>Competing interests: </bold>No competing interests were disclosed.</p>
                </fn>
            </author-notes>
            <pub-date pub-type="epub">
                <day>21</day>
                <month>8</month>
                <year>2024</year>
            </pub-date>
            <permissions>
                <copyright-statement>Copyright: &#x00a9; 2024 Golder U</copyright-statement>
                <copyright-year>2024</copyright-year>
                <license xlink:href="https://creativecommons.org/licenses/by/4.0/">
                    <license-p>This is an open access peer review report distributed under the terms of the Creative Commons Attribution Licence, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.</license-p>
                </license>
            </permissions>
            <related-article ext-link-type="doi" id="relatedArticleReport313924" related-article-type="peer-reviewed-article" xlink:href="10.12688/f1000research.123849.4"/>
            <custom-meta-group>
                <custom-meta>
                    <meta-name>recommendation</meta-name>
                    <meta-value>approve</meta-value>
                </custom-meta>
            </custom-meta-group>
        </front-stub>
        <body>
            <p>The manuscript looks good and has improved significantly. I believe this version can be finally indexed.</p>
            <p>Is the work clearly and accurately presented and does it cite the current literature?</p>
            <p>Yes</p>
            <p>If applicable, is the statistical analysis and its interpretation appropriate?</p>
            <p>Partly</p>
            <p>Are all the source data underlying the results available to ensure full reproducibility?</p>
            <p>Yes</p>
            <p>Is the study design appropriate and is the work technically sound?</p>
            <p>Partly</p>
            <p>Are the conclusions drawn adequately supported by the results?</p>
            <p>Yes</p>
            <p>Are sufficient details of methods and analysis provided to allow replication by others?</p>
            <p>Partly</p>
            <p>Reviewer Expertise:</p>
            <p>My research interest is Fintech, Environmental, and Climate Financing. I also have an interest in Growth and Banking related field</p>
            <p>I confirm that I have read this submission and believe that I have an appropriate level of expertise to confirm that it is of an acceptable scientific standard.</p>
        </body>
    </sub-article>
    <sub-article article-type="reviewer-report" id="report217940">
        <front-stub>
            <article-id pub-id-type="doi">10.5256/f1000research.157421.r217940</article-id>
            <title-group>
                <article-title>Reviewer response for version 3</article-title>
            </title-group>
            <contrib-group>
                <contrib contrib-type="author">
                    <name>
                        <surname>Golder</surname>
                        <given-names>Uttam</given-names>
                    </name>
                    <xref ref-type="aff" rid="r217940a1">1</xref>
                    <role>Referee</role>
                    <uri content-type="orcid">https://orcid.org/0000-0003-1302-838X</uri>
                </contrib>
                <aff id="r217940a1">
                    <label>1</label>Assistant Professor of Dept. of Finance and Banking, Jashore University of Science and Technology, Jessore District, Khulna Division, Bangladesh</aff>
            </contrib-group>
            <author-notes>
                <fn fn-type="conflict">
                    <p>
                        <bold>Competing interests: </bold>No competing interests were disclosed.</p>
                </fn>
            </author-notes>
            <pub-date pub-type="epub">
                <day>16</day>
                <month>11</month>
                <year>2023</year>
            </pub-date>
            <permissions>
                <copyright-statement>Copyright: &#x00a9; 2023 Golder U</copyright-statement>
                <copyright-year>2023</copyright-year>
                <license xlink:href="https://creativecommons.org/licenses/by/4.0/">
                    <license-p>This is an open access peer review report distributed under the terms of the Creative Commons Attribution Licence, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.</license-p>
                </license>
            </permissions>
            <related-article ext-link-type="doi" id="relatedArticleReport217940" related-article-type="peer-reviewed-article" xlink:href="10.12688/f1000research.123849.3"/>
            <custom-meta-group>
                <custom-meta>
                    <meta-name>recommendation</meta-name>
                    <meta-value>reject</meta-value>
                </custom-meta>
            </custom-meta-group>
        </front-stub>
        <body>
            <p>1. I did not find any error correction term.</p>
            <p> </p>
            <p> 2. Unit root test results are shown only on 1st difference. The level is not reported. So, it is not possible to understand whether the VECM model is applicable or not.</p>
            <p> </p>
            <p> 3. Heteroskedasticity and&#x00a0;Serial correlation tests have been done using lag 2. Why? Determining VECM, you used lag 3, so you have to use lag 3 for determining heteroskedasticity and&#x00a0;Serial correlation</p>
            <p>Is the work clearly and accurately presented and does it cite the current literature?</p>
            <p>Yes</p>
            <p>If applicable, is the statistical analysis and its interpretation appropriate?</p>
            <p>Partly</p>
            <p>Are all the source data underlying the results available to ensure full reproducibility?</p>
            <p>Yes</p>
            <p>Is the study design appropriate and is the work technically sound?</p>
            <p>Partly</p>
            <p>Are the conclusions drawn adequately supported by the results?</p>
            <p>Yes</p>
            <p>Are sufficient details of methods and analysis provided to allow replication by others?</p>
            <p>Partly</p>
            <p>Reviewer Expertise:</p>
            <p>My research interest is Fintech, Environmental, and Climate Financing. I also have an interest in Growth and Banking related field</p>
            <p>I confirm that I have read this submission and believe that I have an appropriate level of expertise to state that I do not consider it to be of an acceptable scientific standard, for reasons outlined above.</p>
        </body>
    </sub-article>
    <sub-article article-type="reviewer-report" id="report195568">
        <front-stub>
            <article-id pub-id-type="doi">10.5256/f1000research.154029.r195568</article-id>
            <title-group>
                <article-title>Reviewer response for version 2</article-title>
            </title-group>
            <contrib-group>
                <contrib contrib-type="author">
                    <name>
                        <surname>Syuhada Baharuddin</surname>
                        <given-names>Nurul</given-names>
                    </name>
                    <xref ref-type="aff" rid="r195568a1">1</xref>
                    <role>Referee</role>
                </contrib>
                <contrib contrib-type="author">
                    <name>
                        <surname>Azmin</surname>
                        <given-names>Nur Azwani Mohamad</given-names>
                    </name>
                    <xref ref-type="aff" rid="r195568a1">1</xref>
                    <role>Co-referee</role>
                    <uri content-type="orcid">https://orcid.org/0000-0002-4467-3501</uri>
                </contrib>
                <aff id="r195568a1">
                    <label>1</label>Faculty of Business and Management, Universiti Teknologi MARA Terengganu, Terengganu, Malaysia</aff>
            </contrib-group>
            <author-notes>
                <fn fn-type="conflict">
                    <p>
                        <bold>Competing interests: </bold>No competing interests were disclosed.</p>
                </fn>
            </author-notes>
            <pub-date pub-type="epub">
                <day>10</day>
                <month>10</month>
                <year>2023</year>
            </pub-date>
            <permissions>
                <copyright-statement>Copyright: &#x00a9; 2023 Syuhada Baharuddin N and Azmin NAM</copyright-statement>
                <copyright-year>2023</copyright-year>
                <license xlink:href="https://creativecommons.org/licenses/by/4.0/">
                    <license-p>This is an open access peer review report distributed under the terms of the Creative Commons Attribution Licence, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.</license-p>
                </license>
            </permissions>
            <related-article ext-link-type="doi" id="relatedArticleReport195568" related-article-type="peer-reviewed-article" xlink:href="10.12688/f1000research.123849.2"/>
            <custom-meta-group>
                <custom-meta>
                    <meta-name>recommendation</meta-name>
                    <meta-value>approve</meta-value>
                </custom-meta>
            </custom-meta-group>
        </front-stub>
        <body>
            <p>Dear Authors,</p>
            <p> </p>
            <p> Thank you for the thorough revision of the article. We have reviewed the changes made in response to our previous comments, and we are pleased to see that the authors have addressed all the concerns and suggestions. The revisions have significantly improved the clarity, organization, and overall quality of the article.</p>
            <p> </p>
            <p> Considering the comprehensive revisions of your manuscript, we are confident in changing our previous status from 'approved with reservation' to 'approved'. We appreciate the authors' dedication to improving the work and commend their efforts. Once again, congratulations on your insightful work.</p>
            <p>Is the work clearly and accurately presented and does it cite the current literature?</p>
            <p>Yes</p>
            <p>If applicable, is the statistical analysis and its interpretation appropriate?</p>
            <p>Partly</p>
            <p>Are all the source data underlying the results available to ensure full reproducibility?</p>
            <p>Yes</p>
            <p>Is the study design appropriate and is the work technically sound?</p>
            <p>Yes</p>
            <p>Are the conclusions drawn adequately supported by the results?</p>
            <p>Yes</p>
            <p>Are sufficient details of methods and analysis provided to allow replication by others?</p>
            <p>Partly</p>
            <p>Reviewer Expertise:</p>
            <p>NA</p>
            <p>We confirm that we have read this submission and believe that we have an appropriate level of expertise to confirm that it is of an acceptable scientific standard.</p>
        </body>
    </sub-article>
    <sub-article article-type="reviewer-report" id="report195569">
        <front-stub>
            <article-id pub-id-type="doi">10.5256/f1000research.154029.r195569</article-id>
            <title-group>
                <article-title>Reviewer response for version 2</article-title>
            </title-group>
            <contrib-group>
                <contrib contrib-type="author">
                    <name>
                        <surname>Golder</surname>
                        <given-names>Uttam</given-names>
                    </name>
                    <xref ref-type="aff" rid="r195569a1">1</xref>
                    <role>Referee</role>
                    <uri content-type="orcid">https://orcid.org/0000-0003-1302-838X</uri>
                </contrib>
                <aff id="r195569a1">
                    <label>1</label>Assistant Professor of Dept. of Finance and Banking, Jashore University of Science and Technology, Jessore District, Khulna Division, Bangladesh</aff>
            </contrib-group>
            <author-notes>
                <fn fn-type="conflict">
                    <p>
                        <bold>Competing interests: </bold>No competing interests were disclosed.</p>
                </fn>
            </author-notes>
            <pub-date pub-type="epub">
                <day>24</day>
                <month>8</month>
                <year>2023</year>
            </pub-date>
            <permissions>
                <copyright-statement>Copyright: &#x00a9; 2023 Golder U</copyright-statement>
                <copyright-year>2023</copyright-year>
                <license xlink:href="https://creativecommons.org/licenses/by/4.0/">
                    <license-p>This is an open access peer review report distributed under the terms of the Creative Commons Attribution Licence, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.</license-p>
                </license>
            </permissions>
            <related-article ext-link-type="doi" id="relatedArticleReport195569" related-article-type="peer-reviewed-article" xlink:href="10.12688/f1000research.123849.2"/>
            <custom-meta-group>
                <custom-meta>
                    <meta-name>recommendation</meta-name>
                    <meta-value>approve-with-reservations</meta-value>
                </custom-meta>
            </custom-meta-group>
        </front-stub>
        <body>
            <p>Thanks to the authors to revise their article. However, in this version, I have some critical comments: 
                <list list-type="order">
                    <list-item>
                        <p>The authors used a Vector error correction model. However, I can not find any error correction term.&#x00a0;It indicates the speed of adjustment and a negative sign indicates a convergence from the short run to the long run and shows a causal relationship of your explanatory variables with the dependent variable. Please report your ECT term</p>
                    </list-item>
                    <list-item>
                        <p>The authors did not show any post-estimation test. The authors must have to show those tests to validate their results. Otherwise, the results are questionable.</p>
                    </list-item>
                </list> So please, report those ECT terms and relevant post-estimation test results. Thank you.</p>
            <p>Is the work clearly and accurately presented and does it cite the current literature?</p>
            <p>Yes</p>
            <p>If applicable, is the statistical analysis and its interpretation appropriate?</p>
            <p>Partly</p>
            <p>Are all the source data underlying the results available to ensure full reproducibility?</p>
            <p>Yes</p>
            <p>Is the study design appropriate and is the work technically sound?</p>
            <p>Partly</p>
            <p>Are the conclusions drawn adequately supported by the results?</p>
            <p>Yes</p>
            <p>Are sufficient details of methods and analysis provided to allow replication by others?</p>
            <p>Partly</p>
            <p>Reviewer Expertise:</p>
            <p>My research interest is Fintech, Environmental, and Climate Financing. I also have an interest in Growth and Banking related field</p>
            <p>I confirm that I have read this submission and believe that I have an appropriate level of expertise to confirm that it is of an acceptable scientific standard, however I have significant reservations, as outlined above.</p>
        </body>
    </sub-article>
    <sub-article article-type="reviewer-report" id="report180157">
        <front-stub>
            <article-id pub-id-type="doi">10.5256/f1000research.135998.r180157</article-id>
            <title-group>
                <article-title>Reviewer response for version 1</article-title>
            </title-group>
            <contrib-group>
                <contrib contrib-type="author">
                    <name>
                        <surname>Syuhada Baharuddin</surname>
                        <given-names>Nurul</given-names>
                    </name>
                    <xref ref-type="aff" rid="r180157a1">1</xref>
                    <role>Referee</role>
                </contrib>
                <contrib contrib-type="author">
                    <name>
                        <surname>Azmin</surname>
                        <given-names>Nur Azwani Mohamad</given-names>
                    </name>
                    <xref ref-type="aff" rid="r180157a1">1</xref>
                    <role>Co-referee</role>
                    <uri content-type="orcid">https://orcid.org/0000-0002-4467-3501</uri>
                </contrib>
                <aff id="r180157a1">
                    <label>1</label>Faculty of Business and Management, Universiti Teknologi MARA Terengganu, Terengganu, Malaysia</aff>
            </contrib-group>
            <author-notes>
                <fn fn-type="conflict">
                    <p>
                        <bold>Competing interests: </bold>No competing interests were disclosed.</p>
                </fn>
            </author-notes>
            <pub-date pub-type="epub">
                <day>25</day>
                <month>7</month>
                <year>2023</year>
            </pub-date>
            <permissions>
                <copyright-statement>Copyright: &#x00a9; 2023 Syuhada Baharuddin N and Azmin NAM</copyright-statement>
                <copyright-year>2023</copyright-year>
                <license xlink:href="https://creativecommons.org/licenses/by/4.0/">
                    <license-p>This is an open access peer review report distributed under the terms of the Creative Commons Attribution Licence, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.</license-p>
                </license>
            </permissions>
            <related-article ext-link-type="doi" id="relatedArticleReport180157" related-article-type="peer-reviewed-article" xlink:href="10.12688/f1000research.123849.1"/>
            <custom-meta-group>
                <custom-meta>
                    <meta-name>recommendation</meta-name>
                    <meta-value>approve-with-reservations</meta-value>
                </custom-meta>
            </custom-meta-group>
        </front-stub>
        <body>
            <p>
                <bold>Abstract</bold>
            </p>
            <p> The authors provide a comprehensive explanation of the study. However, the researchers did not specify either the year or the data range that was employed in their study.</p>
            <p> </p>
            <p> 
                <bold>Introduction</bold>
            </p>
            <p> The problem statement is insufficiently addressed, and the authors include findings from other studies that would be more appropriately highlighted in the Literature Review section. The researcher should emphasize the novel aspects and contributions to existing knowledge of the study.</p>
            <p> </p>
            <p> 
                <bold>Literature Review</bold>
            </p>
            <p> Many of the writings cited in this column are highly regarded, although literature published before 2010 is generally considered outdated. The citation style and sentence structure in the text does not adhere to the prescribed standards of citation formatting. For instance, the first paragraph's line 19 reads, "
                <italic>Several studies have identified interconnected financial markets between different economies of the world during the 1996-1997 crisis Yang et al. (2003) by applying (VAR) vector auto-regression</italic>&#x201d;. Please perform an extensive review and make any necessary changes.</p>
            <p> </p>
            <p> The researchers do not provide any critical analysis or alternative viewpoints to the current body of work; instead, they simply present the actual findings of previous studies. The current composition would benefit from a better structure by being grouped according to the set of arguments that are being criticized.</p>
            <p> </p>
            <p> 
                <bold>Methods</bold>
            </p>
            <p> The sample size is enough for the study. However, there are some minor errors, such as incorrect table indications (Table 3 indicates an Augmented Dickey-Fuller test statistic rather than a descriptive statistic -in the methodology section, line 6).&#x00a0; The authors should label the symbols to make the narration more understandable. To make the table more organized and consistent, 4 decimal places are advised.</p>
            <p> </p>
            <p> 
                <bold>Results</bold>
            </p>
            <p> The flow of the results has been stated simply and precisely. Throughout the discussion of the results, however, there was a lack of support from previous investigations. Only four sources are cited in the study to support the conclusion. It is strongly encouraged to include other sources to back up the findings and continue the conversation.</p>
            <p> </p>
            <p> 
                <bold>Conclusion</bold>
            </p>
            <p> The authors did not specify whether this finding met the objectives and provided a response to the hypothesis. Nonetheless, the authors provided a conclusive summary of the findings in the conclusion. This section contains well-written descriptions of the study's limitations.</p>
            <p>Is the work clearly and accurately presented and does it cite the current literature?</p>
            <p>Yes</p>
            <p>If applicable, is the statistical analysis and its interpretation appropriate?</p>
            <p>Partly</p>
            <p>Are all the source data underlying the results available to ensure full reproducibility?</p>
            <p>Yes</p>
            <p>Is the study design appropriate and is the work technically sound?</p>
            <p>Yes</p>
            <p>Are the conclusions drawn adequately supported by the results?</p>
            <p>Yes</p>
            <p>Are sufficient details of methods and analysis provided to allow replication by others?</p>
            <p>Partly</p>
            <p>Reviewer Expertise:</p>
            <p>NA</p>
            <p>We confirm that we have read this submission and believe that we have an appropriate level of expertise to confirm that it is of an acceptable scientific standard, however we have significant reservations, as outlined above.</p>
        </body>
    </sub-article>
    <sub-article article-type="reviewer-report" id="report172401">
        <front-stub>
            <article-id pub-id-type="doi">10.5256/f1000research.135998.r172401</article-id>
            <title-group>
                <article-title>Reviewer response for version 1</article-title>
            </title-group>
            <contrib-group>
                <contrib contrib-type="author">
                    <name>
                        <surname>Golder</surname>
                        <given-names>Uttam</given-names>
                    </name>
                    <xref ref-type="aff" rid="r172401a1">1</xref>
                    <role>Referee</role>
                    <uri content-type="orcid">https://orcid.org/0000-0003-1302-838X</uri>
                </contrib>
                <aff id="r172401a1">
                    <label>1</label>Assistant Professor of Dept. of Finance and Banking, Jashore University of Science and Technology, Jessore District, Khulna Division, Bangladesh</aff>
            </contrib-group>
            <author-notes>
                <fn fn-type="conflict">
                    <p>
                        <bold>Competing interests: </bold>No competing interests were disclosed.</p>
                </fn>
            </author-notes>
            <pub-date pub-type="epub">
                <day>22</day>
                <month>5</month>
                <year>2023</year>
            </pub-date>
            <permissions>
                <copyright-statement>Copyright: &#x00a9; 2023 Golder U</copyright-statement>
                <copyright-year>2023</copyright-year>
                <license xlink:href="https://creativecommons.org/licenses/by/4.0/">
                    <license-p>This is an open access peer review report distributed under the terms of the Creative Commons Attribution Licence, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.</license-p>
                </license>
            </permissions>
            <related-article ext-link-type="doi" id="relatedArticleReport172401" related-article-type="peer-reviewed-article" xlink:href="10.12688/f1000research.123849.1"/>
            <custom-meta-group>
                <custom-meta>
                    <meta-name>recommendation</meta-name>
                    <meta-value>approve-with-reservations</meta-value>
                </custom-meta>
            </custom-meta-group>
        </front-stub>
        <body>
            <p>
                <bold>Review Report on Cointegration and causality relationship of Indian stock market with selected world markets</bold>
            </p>
            <p> </p>
            <p> The researcher has identified an interesting topic related to the Cointegration and causality relationship of Indian stock market with selected world markets. Thanks to the authors for their effort. However, from my side, some critical issues in the article have been focused:</p>
            <p> </p>
            <p> 
                <bold>
                    <underline>Abstract</underline>
                </bold> 
                <list list-type="order">
                    <list-item>
                        <p>Overall the formation of the abstract is correct. However, the authors should indicate the nature and types of the data. Also, they should mention the date range.</p>
                    </list-item>
                </list> 
                <bold>
                    <underline>Introduction</underline>
                </bold> 
                <list list-type="order">
                    <list-item>
                        <p>The introduction part of the paper is very much simplified. It only provided the overall background of the study, and the problem statement was not fully clear to me. However, it fails to signify it's uniqueness and contribution to the respective fields of knowledge. Also, there is no indication for whom this study is important and in which way it is essential. Besides, what is the study's implication, application, and utility?</p>
                    </list-item>
                    <list-item>
                        <p>The authors have said, "
                            <italic>Some authors such as Zhang &amp; Hamori (2021), have also focused on the possible&#x2026;</italic>". But they only cite two authors of an article. They should cite some more articles.</p>
                    </list-item>
                    <list-item>
                        <p>Please include a separate paragraph with the structure of your remaining work in this study.</p>
                    </list-item>
                </list> 
                <bold>
                    <underline>Literature review</underline>
                </bold> 
                <list list-type="order">
                    <list-item>
                        <p>The authors have said, "
                            <italic>The global financial markets are closely interconnected Muthukumaran et al. (2011) and driven by the emotions of the investors&#x2026;</italic>" The citation and formation of the sentence are not correct. Please correct it.</p>
                    </list-item>
                    <list-item>
                        <p>The authors have said, "
                            <italic>Several studies have identified interconnected financial markets between different economies of the world during the during1996-1997 crisis Yang et al. (2003) by applying VAR (vector auto-regression)</italic>". The citation and formation of the sentence are not correct. Please correct it.</p>
                    </list-item>
                    <list-item>
                        <p>The citation style is wrong in several places of your work; for example, you have said "
                            <italic>Some others studies such as Rajwani &amp; Mukherjee (2013) have argued&#x2026;</italic>". This will be as Rajwani and Mukherjee (2013). This type of mistake is all over the documents. Please check the whole paper, and correct it carefully.</p>
                    </list-item>
                    <list-item>
                        <p>As FIGARCH is used for the 1st time in this article, please use its full form.</p>
                    </list-item>
                    <list-item>
                        <p>The authors have said, "
                            <italic>Some studies such as Fang et al. (2020) also identified that&#x2026;</italic>". However, the authors said some studies but mentioned only one article. Why? Please mention some others.</p>
                    </list-item>
                    <list-item>
                        <p>I do not understand the meaning of your followings sentence, please rewrite it:</p>
                        <p> 
                            <italic>"Ly&#x00f3;csa &amp; Moln&#x00e1;r (2020) found that the autoregressive coefficient was negative during COVID-19 (November 2019 to May 2020) with but the stock market uncertainty and fear of virus highly affected the breath of the autoregressive coefficient amidst the COVID-19 crisis."</italic>
                        </p>
                    </list-item>
                    <list-item>
                        <p>The following sentence it too large. Please rewrite it:</p>
                        <p> "
                            <italic>Nikkinen &amp; Peltom&#x00e4;ki (2020) have focused on investors&#x2019; crash worries and utilised data on published newspaper articles and web search volumes to address the complex relationship between information supply and demand connected to investor anxiety and their consequences on realised stock market returns, implying and finding that the media contribute to the efficiency of the stock market by enhancing the transmission of information."</italic>
                        </p>
                    </list-item>
                    <list-item>
                        <p>At the end of the literature review section, the laps and gaps of the previous study should be identified, but there is no discussion like that. Moreover, the authors have only explained the previous study's empirical results, but there are no critical arguments against the work done previously.</p>
                    </list-item>
                </list> 
                <bold>
                    <underline>Methods</underline>
                </bold> 
                <list list-type="order">
                    <list-item>
                        <p>Authors have cited Engle-Granger model. But did not cite the article, rather the citation style is wrongly placed. He wrote: &#x201c;
                            <italic>Engle-Granger model is used to measure (Stawiarski, 2021) cointegration between&#x2026;</italic>&#x201d;. But (Stawiarski, 2021) should be place at last of the sentence, and also Engle-Granger original paper should be cited where they currently cited (Stawiarski, 2021), on in the place of exactly after the name of Engle-Granger.</p>
                    </list-item>
                    <list-item>
                        <p>The authors told that &#x201c;
                            <italic>The descriptive statistics for all indexes&#x2019; returns are shown in Table 3</italic>.&#x201d;. But actually it is in Table 1. Correct it.</p>
                    </list-item>
                    <list-item>
                        <p>Please do not include the software name and it&#x2019;s version, it is totally unnecessary.</p>
                    </list-item>
                    <list-item>
                        <p>Please exclude the following sentence. It does not make any contribution to your paper:</p>
                        <p> 
                            <italic>"The student version of this software is freely available (
                                <ext-link ext-link-type="uri" xlink:href="https://eviews.com/download/student11/">https://eviews.com/download/student11/</ext-link>)."</italic>
                        </p>
                    </list-item>
                    <list-item>
                        <p>I can not understand the following sentence. Please rewrite it.</p>
                        <p> 
                            <italic>"As a result, a time series with I (0) is stationary; if I (1), the level is stationary</italic>&#x00a0;
                            <italic>and the change is stationary."</italic>
                        </p>
                    </list-item>
                    <list-item>
                        <p>When, you write any equation, make a number of it, and also explain the symbols, so rewrite it:</p>
                        <p> P=m-k</p>
                    </list-item>
                    <list-item>
                        <p>Do not use any informal writing. Authors have said that &#x201c;It is said that the &#x201c;
                            <italic>flap of a butterfly&#x2019;s wings in Brazil could set off a tornado in Texas&#x201d; (Lorenz, 2000) 
                                <bold>that&#x2019;s</bold> not true in the Indian context.</italic>&#x201d; So instead of that&#x2019;s, use that is.</p>
                    </list-item>
                    <list-item>
                        <p>The value of all table should be rewritten. The normal trend is to report three/ four digit after the fraction of a number. So in every table correct it. For example, instead of writing 0.000289, please write 0.000, or 0.0003. Do this in all of your table.</p>
                    </list-item>
                    <list-item>
                        <p>Do not use any scientific format of your value, for example instead of using -2.78E-06 (it is scientific format of a number), use -0.00000278. Do this in all cases.</p>
                    </list-item>
                    <list-item>
                        <p>In table 3, the authors only provided the unit root test results of 1
                            <sup>st</sup> difference, but where is level results? If the level results show the data have no unit root test, the authors can not perform VECM. So, I have to check the level report. Also, this table is not properly organized. Please see the example from this paper how to report unit root test results: 
                            <ext-link ext-link-type="uri" xlink:href="https://doi.org/10.1016%2Fj.heliyon.2023.e14454">https://doi.org/10.1016%2Fj.heliyon.2023.e14454</ext-link>
                        </p>
                    </list-item>
                    <list-item>
                        <p>Where is ECT (error correction term) term? Before validating the results, reviewers should observe it</p>
                    </list-item>
                    <list-item>
                        <p>The author also did not report the diagnostic test. It is very much important to validate authors results. Please report serial correlation, heteroskedasticity, normality, J-B test, CUSUM, and CUSUsqrt test to make final comment on the article.</p>
                    </list-item>
                    <list-item>
                        <p>The authors should also careful about the formation of the sentence. It should be simple and understandable. Professional proofreader might be required.</p>
                    </list-item>
                </list> 
                <bold>
                    <underline>Authors must address the followings</underline>
                </bold> 
                <list list-type="order">
                    <list-item>
                        <p>The unit root test results of level form</p>
                    </list-item>
                    <list-item>
                        <p>The results of Error correction term</p>
                    </list-item>
                    <list-item>
                        <p>Results of serial correlation, heteroskedasticity, normality, J-B test, CUSUM, and CUSUsqrt test</p>
                    </list-item>
                </list>
            </p>
            <p>Is the work clearly and accurately presented and does it cite the current literature?</p>
            <p>Yes</p>
            <p>If applicable, is the statistical analysis and its interpretation appropriate?</p>
            <p>Partly</p>
            <p>Are all the source data underlying the results available to ensure full reproducibility?</p>
            <p>Yes</p>
            <p>Is the study design appropriate and is the work technically sound?</p>
            <p>Partly</p>
            <p>Are the conclusions drawn adequately supported by the results?</p>
            <p>Yes</p>
            <p>Are sufficient details of methods and analysis provided to allow replication by others?</p>
            <p>Partly</p>
            <p>Reviewer Expertise:</p>
            <p>My research interest is Fintech, Environmental, and Climate Financing. I also have an interest in Growth and Banking related field</p>
            <p>I confirm that I have read this submission and believe that I have an appropriate level of expertise to confirm that it is of an acceptable scientific standard, however I have significant reservations, as outlined above.</p>
        </body>
        <back>
            <ref-list>
                <title>References</title>
                <ref id="rep-ref-172401-1">
                    <label>1</label>
                    <mixed-citation publication-type="journal">
                        <person-group person-group-type="author"/>:
                        <article-title>Financial progress, inward remittances, and economic growth in Bangladesh: Is the nexus asymmetric?</article-title>.
                        <source>
                            <italic>Heliyon</italic>
                        </source>.<year>2023</year>;<volume>9</volume>(<issue>3</issue>) :
                        <elocation-id>10.1016/j.heliyon.2023.e14454</elocation-id>
                        <fpage>e14454</fpage>
                        <pub-id pub-id-type="pmid">36967937</pub-id>
                        <pub-id pub-id-type="doi">10.1016/j.heliyon.2023.e14454</pub-id>
                    </mixed-citation>
                </ref>
            </ref-list>
        </back>
    </sub-article>
</article>
