<?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="review-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.160011.1</article-id>
            <article-categories>
                <subj-group subj-group-type="heading">
                    <subject>Review</subject>
                </subj-group>
                <subj-group>
                    <subject>Articles</subject>
                </subj-group>
            </article-categories>
            <title-group>
                <article-title>Navigating the ethical landscape of AI integration in education: Balancing innovation and responsibility</article-title>
                <fn-group content-type="pub-status">
                    <fn>
                        <p>[version 1; peer review: 1 approved with reservations, 3 not approved]</p>
                    </fn>
                </fn-group>
            </title-group>
            <contrib-group>
                <contrib contrib-type="author" corresp="yes">
                    <name>
                        <surname>Azman</surname>
                        <given-names>&#x00d6;zlem</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/">Methodology</role>
                    <role content-type="http://credit.niso.org/">Project Administration</role>
                    <role content-type="http://credit.niso.org/">Resources</role>
                    <role content-type="http://credit.niso.org/">Supervision</role>
                    <role content-type="http://credit.niso.org/">Validation</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/0000-0001-8737-0992</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>T&#x00fc;mkaya</surname>
                        <given-names>Song&#x00fc;l</given-names>
                    </name>
                    <role content-type="http://credit.niso.org/">Supervision</role>
                    <role content-type="http://credit.niso.org/">Validation</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>
                    <xref ref-type="aff" rid="a2">2</xref>
                </contrib>
                <aff id="a1">
                    <label>1</label>Faculty of Education, Cukurova Universitesi, Adana, Turkey</aff>
                <aff id="a2">
                    <label>2</label>Faculty of Education, Cukurova University, Adana, Turkey</aff>
            </contrib-group>
            <author-notes>
                <corresp id="c1">
                    <label>a</label>
                    <email xlink:href="mailto:ozlembadeli@gmail.com">ozlembadeli@gmail.com</email>
                </corresp>
                <fn fn-type="conflict">
                    <p>No competing interests were disclosed.</p>
                </fn>
            </author-notes>
            <pub-date pub-type="epub">
                <day>14</day>
                <month>3</month>
                <year>2025</year>
            </pub-date>
            <pub-date pub-type="collection">
                <year>2025</year>
            </pub-date>
            <volume>14</volume>
            <elocation-id>299</elocation-id>
            <history>
                <date date-type="accepted">
                    <day>27</day>
                    <month>2</month>
                    <year>2025</year>
                </date>
            </history>
            <permissions>
                <copyright-statement>Copyright: &#x00a9; 2025 Azman &#x00d6; and T&#x00fc;mkaya S</copyright-statement>
                <copyright-year>2025</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/14-299/pdf"/>
            <abstract>
                <p>The integration of Artificial Intelligence (AI) in education presents transformative opportunities to personalize learning, enhance teaching methods, and improve student outcomes. AI offers adaptive tutoring systems, data-driven insights, and customized learning experiences, which can significantly improve the educational process. However, the rapid adoption of AI technologies also raises important ethical concerns that must be addressed to ensure responsible implementation. This paper provides an overview of AI&#x2019;s potential in education, while highlighting key ethical issues such as data privacy, algorithmic bias, transparency, and equitable access to AI-powered tools. Through an analysis of existing frameworks and current AI implementations in education, the paper calls for clear ethical guidelines to ensure the responsible use of AI in educational contexts. A collaborative effort among educators, policymakers, and technology developers is essential to build ethical standards that balance innovation with fairness, accountability, and inclusivity. Ultimately, this paper offers insights and practical recommendations for fostering a responsible AI-driven educational environment that benefits all students while safeguarding their rights.</p>
            </abstract>
            <kwd-group kwd-group-type="author">
                <kwd>AI Ethics</kwd>
                <kwd>AI and Education</kwd>
                <kwd>Artificial Intelligence (AI)</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>
    </front>
    <body>
        <sec id="sec1" sec-type="intro">
            <title>Introduction</title>
            <p>The educational landscape is undergoing significant transformation due to the influence of Artificial Intelligence (AI), bringing forth both remarkable innovations and complex ethical challenges. With the increasing integration of AI technologies in educational settings, it becomes crucial to balance their transformative potential with ethical considerations. This article aims to examine the dual impact of AI in education, highlighting its potential advancements and addressing the ethical concerns associated with its implementation.</p>
            <p>AI&#x2019;s influence in education extends beyond simple automation, offering personalized education strategies, adaptable tutoring technologies, and decision-making based on data analysis (
                <xref ref-type="bibr" rid="ref49">Brown, 2020</xref>; 
                <xref ref-type="bibr" rid="ref38">Siemens, 2013</xref>). These advancements promise to revolutionize teaching methodologies, enhance student engagement, and improve learning outcomes (
                <xref ref-type="bibr" rid="ref28">Luckin et al., 2016</xref>). For example, AI-powered platforms like intelligent tutoring systems offer tailored evaluations and support to students, fostering individualized learning (
                <xref ref-type="bibr" rid="ref43">VanLehn, 2011</xref>). Additionally, AI can analyze large volumes of educational data to uncover patterns and insights that inform curriculum development and teaching strategies (
                <xref ref-type="bibr" rid="ref39">Siemens &amp; Long, 2011</xref>).</p>
            <p>
                <xref ref-type="table" rid="T1">
Table 1</xref> provides an overview of AI applications in education, detailing how various technologies enhance learning through personalized instruction, adaptive assessments, intelligent tutoring, administrative efficiency, and data-driven insights.</p>
            <table-wrap id="T1" orientation="portrait" position="float">
                <label>
Table 1. </label>
                <caption>
                    <title>AI applications in education.</title>
                </caption>
                <table content-type="article-table" frame="hsides">
                    <thead>
                        <tr>
                            <th align="left" colspan="1" rowspan="1" valign="top">Application</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">Description</th>
                            <th align="left" colspan="1" rowspan="1" valign="top">Example</th>
                        </tr>
                    </thead>
                    <tbody>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Personalized Learning Platforms</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Customizes curriculum based on student performance</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Knewton, DreamBox</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Adaptive Assessment Tools</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Adjusts difficulty of questions based on student responses</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">ALEKS, Smart Sparrow</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Intelligent Tutoring Systems</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Provides one-on-one tutoring experiences, offering hints and feedback</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Carnegie Learning's Cognitive Tutor</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Administrative Automation</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Automates tasks such as grading, scheduling, and student inquiries</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Chatbots, Virtual Assistants</td>
                        </tr>
                        <tr>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Learning Analytics</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Analyzes data to identify patterns, inform strategies, and predict outcomes</td>
                            <td align="left" colspan="1" rowspan="1" valign="middle">Early warning systems for at-risk students</td>
                        </tr>
                    </tbody>
                </table>
            </table-wrap>
            <p>Despite these transformative benefits, ethical issues such as privacy, transparency, and equity must be addressed (
                <xref ref-type="bibr" rid="ref44">Williamson, 2017</xref>; 
                <xref ref-type="bibr" rid="ref41">Tene &amp; Polonetsky, 2013</xref>). The implementation of AI in education raises concerns about data security and student privacy due to the large quantities of sensitive information being collected and analyzed (
                <xref ref-type="bibr" rid="ref50">Binns, 2018</xref>). In addition to existing concerns, algorithmic bias presents a risk where AI technologies might reinforce entrenched inequalities or give rise to new forms of discrimination, highlighting the need for careful consideration in AI development (
                <xref ref-type="bibr" rid="ref33">Noble, 2018</xref>). The opacity of AI decision-making processes often makes it difficult for educators and students to understand how conclusions are reached (
                <xref ref-type="bibr" rid="ref7">Burrell, 2016</xref>). 
                <xref ref-type="bibr" rid="ref16">Giray, Jacob, and Gumalin (2024)</xref> emphasized significant ethical concerns associated with AI, particularly in relation to data privacy, informed consent, and inherent biases.</p>
            <p>This article explores how educators, policymakers, and stakeholders can navigate these challenges. By examining current practices, emerging trends, and ethical frameworks, the aim is to offer insights into fostering responsible AI integration in education. This approach not only mitigates potential risks but also maximizes AI&#x2019;s positive impact on educational practices and student learning experiences.</p>
            <p>To address these concerns, developing and implementing ethical guidelines and policies governing AI use in education is crucial. The comprehensive guidelines for ethical AI deployment are encapsulated in frameworks like the IEEE Global Initiative on Ethics of Autonomous and Intelligent Systems (
                <xref ref-type="bibr" rid="ref51">IEEE, 2016</xref>). Additionally, building a culture that supports openness and ethical responsibility in the creation of artificial intelligence systems and application can build trust among educators, students, and other stakeholders (
                <xref ref-type="bibr" rid="ref15">Floridi et al., 2018</xref>). Promoting ethical AI practices ensures that the advantages of AI in education are implemented while safeguarding the rights and interests of all involved.</p>
        </sec>
        <sec id="sec2">
            <title>The promise of AI in education</title>
            <p>AI in educational settings offers a variety of applications, such as personalized learning platforms, adaptive assessment tools, and intelligent tutoring systems (
                <xref ref-type="bibr" rid="ref52">Holstein &amp; McLaren, 2019</xref>; 
                <xref ref-type="bibr" rid="ref2">Baker &amp; Siemens, 2015</xref>). These technologies Utilize machine learning techniques to process large datasets, offering adaptive learning experiences that cater to the distinct needs and learning styles of each student. Personalized learning platforms, such as those developed by Knewton and DreamBox, adjust the curriculum alligned with student performance, offering customized pathways that enhance learning efficiency (
                <xref ref-type="bibr" rid="ref35">Pane et al., 2017</xref>). Iterative evaluation tools dynamically alter question difficulty according to student answer patterns, ensuring that assessments accurately reflect student capabilities and knowledge (
                <xref ref-type="bibr" rid="ref10">Conati, 2002</xref>). Smart tutoring platforms, such as Carnegie Learning&#x2019;s Cognitive Tutor, simulate human tutor interactions by providing one-on-one tutoring experiences, offering hints and feedback as students work through problems (
                <xref ref-type="bibr" rid="ref23">Koedinger &amp; Corbett, 2006</xref>).</p>
            <p>Beyond these applications, AI also plays a significant role in reducing administrative burdens through the automation of tasks like grading and scheduling helps educators focus on teaching and engaging with students (
                <xref ref-type="bibr" rid="ref19">Holmes &amp; Tuomi, 2022</xref>). Artificial Intelligence-powered chatbots and virtual assistants provide automated support and information to users. handle student inquiries, providing instant responses and support, which enhances the overall student experience (
                <xref ref-type="bibr" rid="ref45">Woolf et al., 2013</xref>). Furthermore, AI assists in identifying at-risk students early by analyzing patterns in attendance, participation, and academic performance, enabling timely interventions (
                <xref ref-type="bibr" rid="ref1">Arnold &amp; Pistilli, 2012</xref>).</p>
            <p>AI holds the promise to revolutionize education through offering personalized learning experiences, boosting administrative efficiency, and supporting one significant benefit of AI in education is the use of data-informed decision-making strategies to facilitate personalized learning which allows to create effective learning experiences, educational content must be adapted to better suit the specific requirements of each student. AI-driven systems adapt the pace and style of teaching based on the learner&#x2019;s progress and preferences, cultivating a dynamic and impactful setting for effective education (
                <xref ref-type="bibr" rid="ref28">Luckin et al., 2016</xref>).</p>
            <p>AI-driven adaptive learning systems tailor task complexity according to student performance, presenting more difficult questions to advanced learners and giving extra help to those who require it (
                <xref ref-type="bibr" rid="ref24">Kulik &amp; Fletcher, 2016</xref>). For instance, platforms like DreamBox and Knewton employ AI algorithms to evaluate students&#x2019; interactions and deliver customized recommendations, improving learning outcomes through tailored instructional strategies (
                <xref ref-type="bibr" rid="ref35">Pane et al., 2017</xref>).</p>
            <p>Moreover, AI significantly enhances administrative tasks in educational institutions. By automating routine tasks, like grading, scheduling, and student record management, educators can liberate important time, enabling them to devote more attention to teaching and engaging with students (
                <xref ref-type="bibr" rid="ref19">Holmes &amp; Tuomi 2022</xref>). AI systems efficiently handle tons of data, managing administrative burdens and increasing overall efficiency. AI&#x2019;s power to work with large amounts of datasets enables data-based decisions in education. Tracking student learning progress, a field that leverages AI to interpret educational data, provides clarity on student achievements, identifies students who need more support, and informs policy decisions (
                <xref ref-type="bibr" rid="ref39">Siemens &amp; Long, 2011</xref>). By tracking and analyzing student data, educators achieve a better grasp of patterns in student learning and outcomes, leading to more informed and effective educational strategies (
                <xref ref-type="bibr" rid="ref21">Ifenthaler &amp; Widanapathirana, 2014</xref>).</p>
            <p>The integration of AI in education extends beyond academic support to fostering soft skills and social-emotional learning. AI-driven tools facilitate the development of critical thinking, problem-solving, and collaboration skills by creating interactive and immersive learning experiences (
                <xref ref-type="bibr" rid="ref48">Zawacki-Richter et al., 2019</xref>). For instance, AI-supported Virtual Reality (VR) and Augmented Reality (AR) solutions offer students with hands-on learning opportunities in a controlled environment, enhancing engagement and retention (
                <xref ref-type="bibr" rid="ref26">Liu et al., 2017</xref>).</p>
            <p>However, unlocking AI&#x2019;s full potential in education necessitates overcoming a range of complex challenges. A critical component of this process is the need to guarantee equitable access to AI technologies to mitigate the risk of deepening existing educational disparities (
                <xref ref-type="bibr" rid="ref36">Romero &amp; Ventura 2016</xref>). Furthermore, the integration of AI tools into teaching practices requires a deliberate and continuous effort in professional development for educators, focusing on both advanced technological skills and innovative pedagogical approaches (
                <xref ref-type="bibr" rid="ref8">Chen et al., 2020</xref>). By overcoming these obstacles and harnessing AI&#x2019;s full potential, the education sector has the opportunity to pioneer new teaching methodologies and innovative learning experiences, ultimately achieving better educational outcomes and preparing students for future endeavors.</p>
        </sec>
        <sec id="sec3">
            <title>Enhancing education through AI-supported learning methods</title>
            <p>AI-supported learning methods offer numerous advantages over traditional educational approaches. One significant benefit is the facilitation of real-time feedback mechanisms, allowing students to receive immediate responses and personalized guidance (
                <xref ref-type="bibr" rid="ref43">VanLehn, 2011</xref>). This immediacy helps students correct misconceptions promptly and reinforces learning through continuous interaction. Additionally, AI-powered systems can adaptively adjust content and pacing based on student performance, optimizing learning efficiency and retention (
                <xref ref-type="bibr" rid="ref39">Siemens &amp; Long, 2011</xref>). Studies have shown that adaptive learning technologies can significantly improve student outcomes, particularly in subjects requiring cumulative knowledge, such as mathematics and science (
                <xref ref-type="bibr" rid="ref5">Beck &amp; Gong, 2013</xref>).</p>
            <p>Moreover, AI can enhance engagement by incorporating gamification elements and interactive simulations into the learning process (
                <xref ref-type="bibr" rid="ref8">Chen et al., 2020</xref>). The application of AI in the creation of educational games and immersive learning experiences can transform traditional learning environments into more enjoyable and interactive settings, leading to increased student motivation and participation (
                <xref ref-type="bibr" rid="ref22">Johnson et al., 2016</xref>). AI-supported learning methods also promote inclusivity by providing personalized learning experiences for students with diverse needs and abilities. For instance, AI can assist students with disabilities by offering customized support, such as speech-to-text services for students with hearing impairments or tailored reading materials for students with dyslexia (
                <xref ref-type="bibr" rid="ref28">Luckin et al., 2016</xref>). By providing tailored learning experiences, this approach ensures that all students, irrespective of their unique challenges, receive equitable access to high-quality educational resources and instruction.</p>
            <p>The strategic integration of AI in educational contexts holds promise for improving student outcomes by enhancing engagement, motivation, and academic achievement (
                <xref ref-type="bibr" rid="ref3">Baker, 2016</xref>). The integration of AI technologies into educational environments enables the creation of personalized learning pathways that facilitate self-paced progress, thereby enhancing students&#x2019; ability to achieve effective mastery of subjects according to their individual learning needs (
                <xref ref-type="bibr" rid="ref35">Pane et al., 2017</xref>). There is robust evidence that individualized learning frameworks enhance student satisfaction and reduce dropout rates, especially within the context of higher education (
                <xref ref-type="bibr" rid="ref48">Zawacki-Richter et al., 2019</xref>). AI technologies also hold the potential to facilitate teachers in developing more effective instructional strategies and personalized interventions for struggling students (
                <xref ref-type="bibr" rid="ref52">Holstein &amp; McLaren, 2019</xref>). For instance, AI can analyze classroom data to identify which teaching methods are most effective for different types of learners, allowing teachers to tailor their instruction accordingly (
                <xref ref-type="bibr" rid="ref38">Siemens, 2013</xref>). AI can also provide teachers with detailed reports on student performance, highlighting areas where students might require additional support or further enrichment opportunities (
                <xref ref-type="bibr" rid="ref21">Ifenthaler &amp; Widanapathirana, 2014</xref>).</p>
            <p>Furthermore, the application of AI in data analytics can unveil critical insights into learning patterns and educational trends, informing evidence-based decision-making at institutional levels (
                <xref ref-type="bibr" rid="ref38">Siemens, 2013</xref>). Educational institutions can use these insights to design more effective curricula, allocate resources more efficiently, and implement policies that enhance overall educational quality. For example, predictive analytics can help universities anticipate enrollment trends and adjust their offerings to meet future demand (
                <xref ref-type="bibr" rid="ref1">Arnold &amp; Pistilli, 2012</xref>). Recent developments in educational technologies highlighting the convergence of AI with cutting-edge innovations like virtual reality (VR), augmented reality (AR), and gamification, These advancements aim to foster immersive learning experiences that engage students and enhance knowledge retention (
                <xref ref-type="bibr" rid="ref28">Luckin et al., 2016</xref>). Moreover, AI-driven analytics tools offer insights into learning analytics and educational data mining, enabling educators to adopt data-informed approaches to enhance teaching strategies and elevate student performance (
                <xref ref-type="bibr" rid="ref39">Siemens &amp; Long, 2011</xref>).</p>
            <p>In conclusion, AI&#x2019;s contribution to education is evolving rapidly, offering transformative opportunities to innovate teaching, and learning practices. Nevertheless, while the prospective advantages are considerable, it is crucial to adress the ethical dimensions and secure responsible deployment to maximize educational equity and accessibility. Addressing issues such as data privacy, algorithmic bias, democratic access to AI technologies is essential to guarantee that the advantages of AI are allocated fairly across all student populations (
                <xref ref-type="bibr" rid="ref44">Williamson, 2017</xref>). By fostering a collaborative approach involving educators, policymakers, and technology developers, we have the opportunity to cultivate a more inclusive and effective educational framework that supports diverse learners and enhances overall educational effectiveness.</p>
        </sec>
        <sec id="sec4">
            <title>Ethical challenges in AI integration</title>
            <p>As Artificial Intelligence (AI) becomes increasingly embedded in educational practices, it raises complex ethical issues that demand critical scrutiny and the development of effective ethical guidelines and necessitate careful consideration. This section examines the ethical dilemmas associated with the deployment of AI in educational settings, addressing concerns such as data privacy, student safety, and the transparency of learning processes. It also discusses the standards and policies required for fair and transparent AI-supported decision-making processes.</p>
        </sec>
        <sec id="sec5">
            <title>Privacy and security of data</title>
            <p>As AI tools are integrated into educational practices, the resulting collection and analysis of large datasets highlight critical issues concerning data privacy and security. AI systems require access to detailed information about students&#x2019; academic performance, personal characteristics, and even behavioral patterns to provide personalized learning experiences (
                <xref ref-type="bibr" rid="ref50">Binns, 2018</xref>). This level of data collection poses risks of unauthorized access, breaches of security, and the potential for sensitive information to be misused.</p>
            <p>Ensuring robust data protection measures is crucial to safeguarding student privacy. Educational institutions must implement stringent security protocols to design and apply protocols that prevent data breaches and unauthorized access. Additionally, it is essential to formulate explicit policies regarding data usage, ensuring that students and their guardians are fully informed about how their data is being gathered, archived, and utilized (
                <xref ref-type="bibr" rid="ref41">Tene &amp; Polonetsky, 2013</xref>). Protecting data privacy, ensuring student safety, and maintaining the transparency of AI-driven learning processes are critical considerations. Educators and policymakers must establish robust protocols for data collection, storage, and usage to safeguard sensitive information and uphold student trust (
                <xref ref-type="bibr" rid="ref37">Selwyn, 2020</xref>). Transparent communication about the purposes and implications of AI innovations in the educational sphere is essential to promote accountability and mitigate potential risks (
                <xref ref-type="bibr" rid="ref4">Barocas &amp; Selbst, 2016</xref>).</p>
        </sec>
        <sec id="sec6">
            <title>Algorithmic bias and fairness</title>
            <p>Algorithmic bias is a critical ethical issue in the deployment of AI systems in education. When AI algorithms are constructed from comprehensive datasets, they may unintentionally perpetuate inherent biases in the data (
                <xref ref-type="bibr" rid="ref33">Noble, 2018</xref>), leading to discriminatory practices against specific population of students, perpetuating existing inequalities or even creating new forms of discrimination. For example, AI algorithms used in student assessment and grading may inadvertently perpetuate biases if not properly monitored and calibrated (
                <xref ref-type="bibr" rid="ref25">Lipton, 2018</xref>). To counteract this threat, it is essential to uphold that AI algorithms are designed and tested with fairness in mind. This entails employing diverse and representative datasets, performing regular bias audits, and developing mechanisms to identify and correct biased outcomes (
                <xref ref-type="bibr" rid="ref50">Binns, 2018</xref>).</p>
        </sec>
        <sec id="sec7">
            <title>Transparency and accountability</title>
            <p>To ensure that educators, students, and other stakeholders trust AI systems, it is essential for these systems to be transparent in their decision-making processes, given that they often function as &#x2018;black boxes&#x2019; (
                <xref ref-type="bibr" rid="ref7">Burrell, 2016</xref>). The opacity of these systems can hinder ethical accountability and make it difficult to address any errors or biases that may arise. To promote transparency, AI developers and educational institutions should be dedicated to fostering the explainability of AI systems. This means designing algorithms that can provide clear and understandable explanations for their decisions and actions (
                <xref ref-type="bibr" rid="ref15">Floridi et al., 2018</xref>). Moreover, establishing accountability frameworks is vital to make sure that there are effective mechanisms available to address grievances and rectify any negative impacts resulting from AI usage (
                <xref ref-type="bibr" rid="ref44">Williamson, 2017</xref>).</p>
            <p>Developing standards and policies that promote fairness and clarity in AI-supported decision-making procedures is imperative. This includes implementing algorithmic accountability measures, ensuring diversity and inclusivity in dataset representation, and empowering stakeholders with the knowledge and tools to navigate AI-driven educational environments responsibly (
                <xref ref-type="bibr" rid="ref11">Diakopoulos, 2014</xref>; 
                <xref ref-type="bibr" rid="ref12">
European Commission, 2018</xref>). By addressing these ethical challenges, the educational sector can leverage AI technologies to enhance learning outcomes while safeguarding the rights and interests of students. Through collaborative efforts among educators, policymakers, and technology developers, it is possible to create a learning environment that fosters inclusivity and fairness to ensure that the benefits of AI are fully realized while mitigating associated risks.</p>
        </sec>
        <sec id="sec8">
            <title>Current implementations and ethical frameworks</title>
            <sec id="sec9">
                <title>Implementations of AI in education</title>
                <p>AI&#x2019;s integration into educational practices make use of various applications to boost teaching effectiveness and improve student learning outcomes. Personalized learning platforms, adaptive assessment tools, and intelligent tutoring systems are at the forefront of these advancements (
                    <xref ref-type="bibr" rid="ref52">Holstein &amp; McLaren, 2019</xref>; 
                    <xref ref-type="bibr" rid="ref2">Baker &amp; Siemens, 2015</xref>). These technologies leverage machine learning algorithms to assess extensive datasets to identify, generating individualized learning experiences that accommodate the specific needs and preferences of students.</p>
                <p>Personalized learning platforms, such as those developed by Knewton and DreamBox, modify the curriculum in response to the performance of students, offering customized pathways that enhance learning efficiency (
                    <xref ref-type="bibr" rid="ref35">Pane et al., 2017</xref>). These platforms analyze students&#x2019; interactions to provide personalized recommendations, improving learning outcomes through tailored instructional strategies. Adaptive assessment tools dynamically alter question difficulty according to student responses, ensuring that assessments accurately reflect student capabilities and knowledge (
                    <xref ref-type="bibr" rid="ref10">Conati, 2002</xref>). Innovative systems for personalized instruction, such as Carnegie Learning&#x2019;s Cognitive Tutor, simulate human tutor interactions, providing one-on-one tutoring experiences, hints, and feedback as students work through problems (
                    <xref ref-type="bibr" rid="ref23">Koedinger &amp; Corbett, 2006</xref>).</p>
                <p>Beyond personalized learning, AI plays a significant role by streamlining administrative tasks such as grading and scheduling, teachers are freed up to focus more on direct instruction and supporting students interaction (
                    <xref ref-type="bibr" rid="ref19">Holmes &amp; Tuomi 2022</xref>). AI-enabled chatbots and virtual assistant systems handle student inquiries, providing instant responses and support, which enhances the overall student experience (
                    <xref ref-type="bibr" rid="ref45">Woolf et al., 2013</xref>). Furthermore, AI can assist in identifying at-risk students early by analyzing patterns in attendance, participation, and academic performance, enabling timely interventions (
                    <xref ref-type="bibr" rid="ref1">Arnold &amp; Pistilli, 2012</xref>).</p>
            </sec>
            <sec id="sec10">
                <title>Ethical frameworks for AI infused education</title>
                <p>The rapid deployment of AI technologies in education necessitates the establishment of ethical frameworks to address the accompanying ethical concerns. Several organizations and initiatives have developed guidelines and standards to ensure responsible AI integration in educational settings. Guidelines for ethical AI deployment are comprehensively addressed by the IEEE Global Initiative on Ethics of Autonomous and Intelligent Systems, stressing the importance of transparency, accountability, and inclusivity (
                    <xref ref-type="bibr" rid="ref51">IEEE, 2016</xref>). These guidelines advocate for the development of AI systems crafted to prioritize ethical considerations and responsible practices, ensuring that they respect human rights and promote social good. Similarly, In its 2018 report, the European Commission&#x2019;s High-Level Expert Group on Artificial Intelligence established detailed ethical guidelines for trustworthy AI, which include a broad range of principles such as human oversight, technical safety, data governance, transparency, diversity, non-discrimination, societal well-being, and accountability (
                    <xref ref-type="bibr" rid="ref12">
European Commission, 2018</xref>). These principles serve as a foundation for developing and implementing AI systems that prioritize ethical considerations.</p>
                <p>Creating a culture of transparency and accountability in AI development and application is vital for establishing trust with educators, students, and various other stakeholders (
                    <xref ref-type="bibr" rid="ref15">Floridi et al., 2018</xref>). This involves clear communication about how AI systems work, their potential benefits and risks, and the measures taken to ensure their ethical use. Advancing ethical AI practices helps to maximize the benefits of AI in education while protecting the rights and interests of everyone involved. For educators to integrate AI tools into their teaching practices effectively, institutions must offer comprehensive and continuous professional training, covering ethical issues, data interpretation, and bias management (
                    <xref ref-type="bibr" rid="ref8">Chen et al., 2020</xref>).</p>
            </sec>
            <sec id="sec11">
                <title>Synchronizing technological advancements with ethical considerations</title>
                <p>Achieving a harmonious balance between innovation and ethics is essential for maximizing AI&#x2019;s effective use in education. To promote ethical AI use, educators can adopt strategies such as participatory design processes that involve stakeholders in decision-making, conducting ethical impact assessments of AI applications, and fostering a culture of ethical awareness and responsibility (
                    <xref ref-type="bibr" rid="ref53">Bietz et al., 2010</xref>; 
                    <xref ref-type="bibr" rid="ref54">Van den Broek et al., 2024</xref>). These approaches ensure that AI technologies align with educational values and goals while minimizing unintended consequences.</p>
                <p>Educational institutions should prioritize ethical rules, including transparency in decision-making, equality, and accountability in governance, as well as inclusive practices when integrating AI technologies (
                    <xref ref-type="bibr" rid="ref15">Floridi et al., 2018</xref>). Establishing clear guidelines for data governance, promoting ethical leadership among educators and administrators, and fostering interdisciplinary collaboration are essential steps in upholding ethical standards throughout AI deployment in educational settings (
                    <xref ref-type="bibr" rid="ref44">Williamson, 2017</xref>).</p>
                <p>Looking ahead, future studies should focus on advancing ethical frameworks for AI in education, exploring the ethical implications of emerging technologies, and developing adaptive regulatory frameworks that can evolve alongside technological advancements (
                    <xref ref-type="bibr" rid="ref13">
European Parliament, 2020</xref>). By proactively addressing ethical challenges and leveraging innovation responsibly, educational institutions can harness AI&#x2019;s full potential to foster.</p>
            </sec>
        </sec>
        <sec id="sec12">
            <title>Balancing innovation and ethical responsibility</title>
            <p>Optimizes the educational benefits of AI while managing ethical considerations, a balanced approach is necessary, balancing progressive innovation with ethical guidelines is important to ensure fairness and equity. This involves adopting a comprehensive approach that includes stakeholder involvement, continuous evaluation, and adherence to ethical principles. Strategies for Ethical AI Integration.</p>
            <sec id="sec13">
                <title>Participatory design processes</title>
                <p>Involving a broad spectrum of primary stakeholders, such as teachers, learners, parents, and policy advisors, need to be included in the development and implementation of AI systems ensures that these technologies meet the diverse needs of the educational community. This collaborative approach helps build trust and promotes the creation of AI tools that are in alignment with educational values and objectives. According to 
                    <xref ref-type="bibr" rid="ref53">Bietz et al. (2010)</xref>, such inclusive design processes can help identify and mitigate potential biases and ethical issues early on. 
                    <xref ref-type="bibr" rid="ref54">Van den Broek et al. (2024)</xref> highlights that participatory design boosts the usability and relevance of AI tools while simultaneously increasing user acceptance and satisfaction.</p>
            </sec>
            <sec id="sec14">
                <title>Ethical impact assessments</title>
                <p>Thorough ethical impact assessments of AI applications can help identify potential risks and unintended consequences. These assessments should consider aspects such considerations as algorithmic bias, data privacy, algorithmic bias, and the broader social implications of AI deployment in education. 
                    <xref ref-type="bibr" rid="ref14">Floridi and Cowls (2019)</xref> suggest that ethical impact assessments should be an ongoing process, evolving in conjunction with AI systems and their practical implementations, 
                    <xref ref-type="bibr" rid="ref41">Tene and Polonetsky (2013)</xref> argue that proactively identifying risks can lead to better-designed systems that protect user interests and maintain public trust.</p>
            </sec>
            <sec id="sec15">
                <title>Continuous professional development</title>
                <p>Providing ongoing training and support for educators is essential to incorporate AI technologies effectively into the teaching process. This includes equipping teachers with the knowledge and skills to interpret AI-generated insights, address biases, and ensure equitable access to AI-enhanced educational resources. 
                    <xref ref-type="bibr" rid="ref8">Chen et al. (2020)</xref> underscores the importance of continuous programs that develop technical abilities, foster ethical consciousness, and encourage critical examination of AI. By staying informed about the most recent innovations in AI and their implications, educators can better navigate the complexities of AI integration in education.</p>
            </sec>
            <sec id="sec16">
                <title>Transparent communication</title>
                <p>Maintaining transparency about how AI systems work, their potential benefits and risks, and the measures taken to ensure their ethical use is crucial for building trust among stakeholders. Clear communication fosters accountability and helps mitigate potential ethical concerns. 
                    <xref ref-type="bibr" rid="ref4">Barocas and Selbst (2016)</xref> note that transparency involves not only disclosing technical details but also explaining the decision-making processes and the rationale behind AI-driven outcomes. Transparent communication can demystify AI technologies and empower stakeholders to make informed decisions.</p>
            </sec>
            <sec id="sec27">
                <title>Adjustable regulatory frameworks</title>
                <p>It is imperative to develop regulatory frameworks that evolve in alignment with technological advancements for ensuring the accountable use of AI in education. These frameworks should prioritize key values in ethical norms: transparency, fairness, accountability, and inclusivity The 
                    <xref ref-type="bibr" rid="ref13">
European Parliament (2020)</xref> recommends that regulatory frameworks should balance flexibility for new developments with the need for clear and consistent guideline for ethical AI deployment. By establishing a robust regulatory environment, policymakers can create a foundation for sustainable and responsible AI integration in education.</p>
            </sec>
            <sec id="sec17">
                <title>Inclusive data practices</title>
                <p>Confirming that the data utilized for AI training systems in education is representative and inclusive of diverse populations is crucial. This involves actively working to avoid data biases that could perpetuate inequalities. Implementing stringent data governance practices and regularly auditing datasets can help maintain fairness and accuracy (
                    <xref ref-type="bibr" rid="ref30">Mehrabi et al., 2021</xref>). Ensuring inclusivity requires a comprehensive approach that includes collecting data from diverse student populations, addressing potential biases in the data collection process, and continuously updating datasets to reflect changing demographics and educational needs. This not only helps in providing equitable educational outcomes but also promotes a more inclusive and supportive learning environment. For example, a study by 
                    <xref ref-type="bibr" rid="ref55">Buolamwini and Gebru (2018)</xref> highlighted the disparities in facial recognition technologies, emphasizing the need for diverse data sets to avoid bias and inaccuracies in AI applications. By prioritizing inclusivity, AI systems can provide more equitable educational outcomes for all students, ensuring that no group is disproportionately disadvantaged.</p>
            </sec>
            <sec id="sec18">
                <title>Ethical review boards</title>
                <p>Establishing ethical review boards within educational institutions is essential for ensuring ongoing oversight of AI projects. These boards, composed of ethicists, educators, technologists, and student representatives, play a crucial role in evaluating AI initiatives from multiple perspectives, thus identifying potential ethical issues before they escalate and ensuring alignment with institutional values and societal norms (
                    <xref ref-type="bibr" rid="ref32">Morley et al., 2019</xref>).</p>
                <p>The review process begins with researchers or developers submitting AI project proposals to the ethical review board. The board conducts a preliminary screening to ensure proposals meet basic ethical standards and institutional guidelines. Proposals that pass this initial screening undergo a detailed ethical assessment, focusing on aspects Considerations include aspects like algorithmic bias, data privacy, and the possible effects on society. Stakeholder consultation is a vital part of the process, where the board gathers diverse perspectives from educators, students, and technologists on the ethical implications of the proposed AI project. Following this, the board deliberates on the findings, identifying potential ethical issues and recommending necessary modifications (
                    <xref ref-type="bibr" rid="ref29">Matthias, 2021</xref>). The project team then receives feedback and recommendations from the review board, addressing any ethical concerns and suggesting changes to the proposal.</p>
                <p>The revised proposal, incorporating the board&#x2019;s feedback, is submitted for final approval. If all ethical concerns are adequately addressed, the proposal is approved for implementation. Even after approval, the board continues to monitor the AI project during and after its implementation to ensure ongoing compliance with ethical standards. This ongoing oversight helps promote a culture of ethical consciousness and accountability in the institution. The following flowchart (
                    <xref ref-type="fig" rid="f1">
Figure 1</xref>) is a conceptual flowchart for the AI ethical review process, illustrating the steps taken to ensure ethical compliance in AI projects:</p>
                <fig fig-type="figure" id="f1" orientation="portrait" position="float">
                    <label>
Figure 1. </label>
                    <caption>
                        <title>AI ethical review process.</title>
                    </caption>
                    <graphic id="gr1" orientation="portrait" position="float" xlink:href="https://f1000research-files.f1000.com/manuscripts/175814/41e078c3-8f9c-4038-ae3b-e2bc8c742832_figure1.gif"/>
                </fig>
            </sec>
            <sec id="sec19">
                <title>Student empowerment and digital literacy</title>
                <p>Empowering students with digital literacy skills is essential for them to navigate and critically engage with AI technologies. Educational programs should focus on teaching, providing students with knowledge about the ethical aspects of AI, data privacy, and algorithmic decision-making. By fostering a deeper understanding of AI, students can become more informed and responsible users and advocates for ethical AI practices (
                    <xref ref-type="bibr" rid="ref27">Livingstone, 2018</xref>). This involves integrating digital literacy into the curriculum at all educational levels, ensuring that students understand both the technical and ethical aspects of AI. Programs like 
                    <ext-link ext-link-type="uri" xlink:href="http://Code.org">Code.org</ext-link> and AI4All are examples of initiatives that aim to increase AI literacy among students, providing them with the skills needed to engage with AI responsibly. Additionally, hands-on projects and real-world applications can help students understand the practical implications of AI, preparing them to address ethical challenges in their future careers (
                    <xref ref-type="bibr" rid="ref17">Holmes, Bialik, &amp; Fadel, 2023</xref>).</p>
            </sec>
            <sec id="sec20">
                <title>Case studies and best practices</title>
                <p>Documenting and sharing case studies of successful and ethically sound AI implementations in education can serve as valuable resources for other institutions. Highlighting best practices and lessons learned can guide educators and policymakers in making informed decisions about AI integration. These case studies can also provide practical insights into overcoming common challenges and pitfalls (
                    <xref ref-type="bibr" rid="ref48">Zawacki-Richter et al., 2019</xref>). For example, the AI-powered tutoring system implemented at Georgia State University has been widely recognized for improving student retention rates while adhering to ethical standards. Detailed documentation of such initiatives, including the processes and frameworks used, can serve as a blueprint for other institutions. Furthermore, platforms like ISTE, or the International Society for Technology in Education, supports educators with innovative technology practices provide resources and forums for sharing best practices and case studies, fostering a collaborative approach to ethical AI integration in education (
                    <xref ref-type="bibr" rid="ref56">ISTE, 2017</xref>).</p>
            </sec>
            <sec id="sec21">
                <title>International collaboration and standards</title>
                <p>Promoting international collaboration and developing global principles for AI in education can serve harmonize ethical practices across different regions and cultures. By working together, countries can share knowledge, resources, and regulatory frameworks to address common ethical challenges. For example, international bodies such as UNESCO can play a pivotal role in facilitating such collaboration and standardization efforts (
                    <xref ref-type="bibr" rid="ref42">UNESCO, 2019</xref>). Developing global standards ensures that ethical considerations are uniformly addressed, regardless of regional differences. Moreover, international collaboration can lead to the creation of a global repository of best practices and guidelines, helping institutions worldwide implement AI in education responsibly and ethically. Collaborative efforts can also foster cross-cultural understanding and ensure that AI systems accommodate cultural diversity, align with ethical values, ongoing assessment and improvement are required.</p>
                <p>Effectively balancing innovation and ethical responsibility in AI&#x2019;s role in education requires a multi-faceted approach. Stakeholders must engage in participatory design, conduct ethical impact assessments, provide continuous professional development, maintain transparent communication, develop adaptive regulatory frameworks, ensure inclusive data practices, establish ethical review boards, empower students with digital literacy, document and share case studies, and promote international collaboration. By integrating these strategies, the educational community can deploy AI to elevate educational outcomes while safeguarding ethical standards and public trust. This holistic strategy guarantees that AI technologies are not only innovative but also fair, transparent, and aligned with the values of the educational community.</p>
                <p>To effectively balance innovation and ethical responsibility, various stakeholders in the education sector need to take proactive steps. Educators and administrators should implement ethical guidelines that include protocols for data governance, algorithmic accountability, and student privacy (
                    <xref ref-type="bibr" rid="ref15">Floridi et al., 2018</xref>). Promoting ethical leadership among educators and administrators by encouraging a culture of responsibility and ethical awareness is also essential (
                    <xref ref-type="bibr" rid="ref44">Williamson, 2017</xref>). Additionally, engaging in continuous professional development programs helps educators keep informed about new AI breakthroughs and their ethical implications (
                    <xref ref-type="bibr" rid="ref8">Chen et al., 2020</xref>).</p>
                <p>Policymakers should develop comprehensive policies that overcome the ethical challenges brought by AI in education, ensuring these policies are adaptable to future technological developments (
                    <xref ref-type="bibr" rid="ref12">
European Commission, 2018</xref>). Making AI technologies accessible to all students, no matter their socioeconomic situation, is vital to stopping the digital divide from widening.</p>
                <p>Technology developers must ensure that ethical implications in the strategizing and creating of AI systems. This necessitates addressing possible biases, protecting personal data and promoting transparency (
                    <xref ref-type="bibr" rid="ref11">Diakopoulos, 2014</xref>). Collaboration with educators and other stakeholders is necessary to develop AI tools aligned with educational aims and ideals (
                    <xref ref-type="bibr" rid="ref53">Bietz et al., 2010</xref>).</p>
                <p>Researchers should focus on advancing ethical frameworks for AI in education, exploring the ethical implications of emerging technologies, and developing adaptive regulatory frameworks (
                    <xref ref-type="bibr" rid="ref13">
European Parliament, 2020</xref>). Continuously evaluating the impact of AI on educational practices and outcomes is vital to inform evidence-based policy decisions and ethical guidelines (
                    <xref ref-type="bibr" rid="ref39">Siemens &amp; Long, 2011</xref>).</p>
            </sec>
        </sec>
        <sec id="sec22" sec-type="conclusion">
            <title>Conclusion</title>
            <p>The adoption of AI in educational settings creates transformative potential to improve teaching methods and learning outcomes. It personalizes learning experiences, elevates student participation, and provides teachers with critical insights into student performance. Despite its benefits, it also brings up significant ethical dilemmas that must be meticulously addressed to make sure that AI is deployed responsibly, and its benefits are maximized while minimizing potential risks. As 
                <xref ref-type="bibr" rid="ref46">Yahaya et al. (2023)</xref> assert, the ongoing AI revolution is reshaping business and societal landscapes, underscoring the importance of developing theoretical frameworks for understanding ethical responsibility.</p>
            <p>
                <xref ref-type="bibr" rid="ref18">Holmes et al. (2021)</xref> explored the ethical implications of AI, particularly focusing on issues like liability, biased decision-making, and data privacy. These concerns have been widely discussed by both scholars and global organizations, leading to the development of various ethical frameworks. A prominent example is the 
                <xref ref-type="bibr" rid="ref31">

                    <italic toggle="yes">Montr&#x00e9;al Declaration for Responsible Development of Artificial Intelligence</italic> (2018)</xref>, which promotes human-centered principles such as fairness, respect for autonomy, and responsibility. In the realm of AI in education (AIED), similar ethical challenges arise, especially regarding the handling of student data, the potential for bias, and the protection of privacy. Additionally, there are deeper ethical considerations specific to education, including the role of pedagogy, student agency, and equitable access to learning opportunities (
                <xref ref-type="bibr" rid="ref20">Holstein et al., 2019</xref>; 
                <xref ref-type="bibr" rid="ref40">Tarran, 2018</xref>).</p>
            <p>Adopting a balanced approach that emphasizes ethical responsibility is essential for harnessing AI&#x2019;s potential to foster equitable and inclusive learning environments. This involves integrating ethical standarts like transparency, accountability, fairness, and inclusivity in the creation and application of AI technologies. For example, transparency in AI algorithms and decision-making mechanisms can contribute to cultivate trust among students, parents, and educators (
                <xref ref-type="bibr" rid="ref14">Floridi &amp; Cowls, 2019</xref>). Fairness involves ensuring that AI systems do not perpetuate biases or inequalities, which is crucial for promoting equity in education (
                <xref ref-type="bibr" rid="ref4">Barocas &amp; Selbst, 2016</xref>).</p>
            <p>Continuous collaboration among educators, policymakers, technology developers, and researchers is essential to verify the responsible application of AI technologies effectively. Such collaboration can lead to the creation of comprehensive ethical frameworks and guidelines to oversee the use of AI in education use in education. Participatory design processes involving diverse stakeholders can help identify potential ethical issues early and develop solutions that address the needs and concerns of all parties (
                <xref ref-type="bibr" rid="ref53">Bietz et al., 2010</xref>). By emphasizing ethical values like transparency, accountability, fairness, and inclusivity, educational institutions can navigate the challenges posed by AI integration. This involves establishing clear guidelines for data governance, promoting ethical leadership among educators and administrators, and fostering interdisciplinary collaboration (
                <xref ref-type="bibr" rid="ref44">Williamson, 2017</xref>). These measures can play a role in making sure AI technologies are applied in ways that enhance educational outcomes without compromising ethical standards.</p>
            <p>Looking ahead, future research should prioritize advancing ethical protocols or norms for AI in education, exploring the ethical implications of emerging technologies, and developing adaptive regulatory frameworks that can evolve alongside technological advancements (
                <xref ref-type="bibr" rid="ref13">
European Parliament, 2020</xref>). Future investigations should focus on how AI technologies affect student learning over extended periods, privacy, and equity is essential for informing policy decisions and ensuring that AI applications in education are both effective and ethically sound (
                <xref ref-type="bibr" rid="ref17">Holmes, Bialik, &amp; Fadel, 2023</xref>).</p>
            <p>The education sector can navigate the challenges posed by AI integration by fostering a culture of ethical awareness and responsibility. This comprehensive approach ensures That the advantages of AI are leveraged while safeguarding the rights and interests of all stakeholders involved. By promoting ethical practices and continuous collaboration, we can achieve a harmonious balance between innovation and ethical considerations, ultimately enhancing the quality and accessibility of education for all students. Ensuring that all students benefit from advanced educational resources and opportunities is a shared responsibility that requires commitment from all sectors involved in education.</p>
            <p>By maintaining this balance, educational institutions can leverage AI Efforts and should focus on designing educational experiences that are tailored to individual needs, interactive, and impactful. This, in turn, will contribute to the development of a more future-oriented educational approach that prepares students for upcoming challenges and opportunities is crucial for their long-term successprepares students for the challenges and opportunities of the future.</p>
        </sec>
        <sec id="sec23">
            <title>Ethics and consent</title>
            <p>Ethical approval and consent were not required.</p>
        </sec>
    </body>
    <back>
        <sec id="sec26" sec-type="data-availability">
            <title>Data availability</title>
            <p>No data are associated with this article.</p>
        </sec>
        <ref-list>
            <title>References</title>
            <ref id="ref1">
                <mixed-citation publication-type="other">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Arnold</surname>
                            <given-names>KE</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Pistilli</surname>
                            <given-names>MD</given-names>
                        </name>
</person-group>:
                    <chapter-title>Course signals at Purdue: Proceedings of the 2nd International Conference on Learning Analytics and Knowledge.</chapter-title>
                    <source>

                        <italic toggle="yes">ACM Conferences.</italic>
</source>
                    <year>2012, April 29</year>.
                    <pub-id pub-id-type="doi">10.1145/2330601.2330666</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref2">
                <mixed-citation publication-type="book">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Baker</surname>
                            <given-names>RS</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Siemens</surname>
                            <given-names>G</given-names>
                        </name>
</person-group>:
                    <chapter-title>Educational data mining and learning analytics.</chapter-title>
                    <person-group person-group-type="editor">

                        <name name-style="western">
                            <surname>Sawyer</surname>
                            <given-names>RK</given-names>
                        </name>
</person-group>, editor.
                    <source>

                        <italic toggle="yes">The Cambridge Handbook of the Learning Sciences.</italic>
</source>
                    <edition>2nd ed.</edition>
                    <publisher-name>Cambridge University Press</publisher-name>;<year>2015</year>; pp.<fpage>253</fpage>&#x2013;<lpage>272</lpage>.</mixed-citation>
            </ref>
            <ref id="ref3">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Baker</surname>
                            <given-names>RS</given-names>
                        </name>
</person-group>:
                    <article-title>Stupid tutoring systems, intelligent humans.</article-title>
                    <source>

                        <italic toggle="yes">Int. J. Artif. Intell. Educ.</italic>
</source>
                    <year>2016</year>;<volume>26</volume>(<issue>2</issue>):<fpage>600</fpage>&#x2013;<lpage>614</lpage>.
                    <pub-id pub-id-type="doi">10.1007/s40593-016-0105-0</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref4">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

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

                        <name name-style="western">
                            <surname>Selbst</surname>
                            <given-names>AD</given-names>
                        </name>
</person-group>:
                    <article-title>Big Data&#x2019;s disparate impact.</article-title>
                    <source>

                        <italic toggle="yes">SSRN Electron. J.</italic>
</source>
                    <year>2016</year>.
                    <pub-id pub-id-type="doi">10.2139/ssrn.2477899</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref5">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Beck</surname>
                            <given-names>JE</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Gong</surname>
                            <given-names>Y</given-names>
                        </name>
</person-group>:
                    <article-title>Wheel-spinning: Students who fail to master a skill.</article-title>
                    <source>

                        <italic toggle="yes">Lect. Notes Comput. Sci.</italic>
</source>
                    <year>2013</year>;<fpage>431</fpage>&#x2013;<lpage>440</lpage>.
                    <pub-id pub-id-type="doi">10.1007/978-3-642-39112-5_44</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref53">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Bietz</surname>
                            <given-names>MJ</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Baumer</surname>
                            <given-names>EP</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Lee</surname>
                            <given-names>CP</given-names>
                        </name>
</person-group>:
                    <article-title>Synergizing in cyberinfrastructure development.</article-title>
                    <source>

                        <italic toggle="yes">Comput. Support. Coop. Work.</italic>
</source>
                    <year>2010</year>;<volume>19</volume>:<fpage>245</fpage>&#x2013;<lpage>281</lpage>.
                    <pub-id pub-id-type="doi">10.1007/s10606-010-9114-y</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref50">
                <mixed-citation publication-type="other">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Binns</surname>
                            <given-names>R</given-names>
                        </name>
</person-group>:
                    <article-title>Fairness in machine learning: Lesson from political philosophy.</article-title>
                    <source>
                        <italic toggle="yes">Proceedings of the 2018 AAA/ACM Conference on AI, Ethics, and Society.</italic>
                    </source>
                    <year>2018</year>: pp.<fpage>417</fpage>&#x2013;<lpage>422</lpage>.</mixed-citation>
            </ref>
            <ref id="ref6">
                <mixed-citation publication-type="other">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Binns</surname>
                            <given-names>R</given-names>
                        </name>
</person-group>:
                    <chapter-title>On the apparent conflict between individual and group Fairness.</chapter-title>
                    <source>

                        <italic toggle="yes">Proceedings of the 2020 Conference on Fairness, Accountability, and Transparency.</italic>
</source>
                    <year>2020</year>.
                    <pub-id pub-id-type="doi">10.1145/3351095.3372864</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref49">
                <mixed-citation publication-type="other">
                    <person-group person-group-type="author">

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

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

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

                        <etal/>
</person-group>:
                    <article-title>Language models are few-shot learners.</article-title>
                    <source>

                        <italic toggle="yes">Adv. Neural Inf. Process. Syst.</italic>
</source>
                    <year>2020</year>;<volume>33</volume>:<fpage>1877</fpage>&#x2013;<lpage>1901</lpage>.</mixed-citation>
            </ref>
            <ref id="ref55">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

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

                        <name name-style="western">
                            <surname>Gebru</surname>
                            <given-names>T</given-names>
                        </name>
</person-group>:
                    <article-title>Gender shades: Intersectional accuracy disparities in commercial gender classification.</article-title>
                    <source>In Conference on Fairness, Accountability and Transparency.</source>
                    <year>2018, January</year>; pp.<fpage>71</fpage>&#x2013;<lpage>91</lpage>.</mixed-citation>
            </ref>
            <ref id="ref7">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Burrell</surname>
                            <given-names>J</given-names>
                        </name>
</person-group>:
                    <article-title>How the machine &#x2018;thinks&#x2019;: Understanding opacity in machine learning algorithms.</article-title>
                    <source>

                        <italic toggle="yes">Big Data Soc.</italic>
</source>
                    <year>2016</year>;<volume>3</volume>(<issue>1</issue>).
                    <pub-id pub-id-type="doi">10.1177/2053951715622512</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref8">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

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

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

                        <name name-style="western">
                            <surname>Lin</surname>
                            <given-names>Z</given-names>
                        </name>
</person-group>:
                    <article-title>Artificial Intelligence in education: A Review.</article-title>
                    <source>

                        <italic toggle="yes">IEEE Access.</italic>
</source>
                    <year>2020</year>;<volume>8</volume>:<fpage>75264</fpage>&#x2013;<lpage>75278</lpage>.
                    <pub-id pub-id-type="doi">10.1109/access.2020.2988510</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref9">
                <mixed-citation publication-type="other">
                    <person-group person-group-type="author">

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

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

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

                        <etal/>
</person-group>:
                    <chapter-title>Detecting offensive language in social media to protect adolescent online safety.</chapter-title>
                    <source>

                        <italic toggle="yes">2012 International Conference on Privacy, Security, Risk and Trust and 2012 International Confernece on Social Computing.</italic>
</source>
                    <year>2012</year>.
                    <pub-id pub-id-type="doi">10.1109/socialcom-passat.2012.55</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref10">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Conati</surname>
                            <given-names>C</given-names>
                        </name>
</person-group>:
                    <article-title>Probabilistic assessment of user&#x2019;s emotions in educational games.</article-title>
                    <source>

                        <italic toggle="yes">Appl. Artif. Intell.</italic>
</source>
                    <year>2002</year>;<volume>16</volume>(<issue>7&#x2013;8</issue>):<fpage>555</fpage>&#x2013;<lpage>575</lpage>.
                    <pub-id pub-id-type="doi">10.1080/08839510290030390</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref11">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Diakopoulos</surname>
                            <given-names>N</given-names>
                        </name>
</person-group>:
                    <article-title>Algorithmic accountability.</article-title>
                    <source>

                        <italic toggle="yes">Digit. Journal.</italic>
</source>
                    <year>2014</year>;<volume>3</volume>(<issue>3</issue>):<fpage>398</fpage>&#x2013;<lpage>415</lpage>.
                    <pub-id pub-id-type="doi">10.1080/21670811.2014.976411</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref12">
                <mixed-citation publication-type="other">
                    <collab>European Commission</collab>:
                    <article-title>Ethics guidelines for trustworthy AI.</article-title>
                    <year>2018</year>. (n.d.).
                    <ext-link ext-link-type="uri" xlink:href="https://ec.europa.eu/digital-single-market/en/news/ethics-guidelines-trustworthy-ai">Reference Source</ext-link>
                </mixed-citation>
            </ref>
            <ref id="ref13">
                <mixed-citation publication-type="other">
                    <collab>European Union</collab>:
                    <article-title>The use of artificial intelligence in Education, culture and the audiovisual sector: Hearings: Events: Cult: 9th parliamentary term (2019-2024): Committees: European Parliament.</article-title>
                    <year>2020</year>.
                    <ext-link ext-link-type="uri" xlink:href="https://www.europarl.europa.eu/committees/en/the-use-of-artificial-intelligence-in-ed/product-details/20200305CHE07241">Reference Source</ext-link>
                </mixed-citation>
            </ref>
            <ref id="ref14">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

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

                        <name name-style="western">
                            <surname>Cowls</surname>
                            <given-names>J</given-names>
                        </name>
</person-group>:
                    <article-title>A unified framework of five principles for AI in society.</article-title>
                    <source>

                        <italic toggle="yes">Harv. Data Sci. Rev.</italic>
</source>
                    <year>2019</year>;<volume>1</volume>(<issue>1</issue>).
                    <pub-id pub-id-type="doi">10.1162/99608f92.8cd550d1</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref15">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

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

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

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

                        <etal/>
</person-group>:
                    <article-title>AI4People&#x2014;an ethical framework for a good AI Society: Opportunities, Risks, principles, and recommendations.</article-title>
                    <source>

                        <italic toggle="yes">Mind. Mach.</italic>
</source>
                    <year>2018</year>;<volume>28</volume>(<issue>4</issue>):<fpage>689</fpage>&#x2013;<lpage>707</lpage>.
                    <pub-id pub-id-type="pmid">30930541</pub-id>
                    <pub-id pub-id-type="doi">10.1007/s11023-018-9482-5</pub-id>
                    <pub-id pub-id-type="pmcid">PMC6404626</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref16">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

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

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

                        <name name-style="western">
                            <surname>Gumalin</surname>
                            <given-names>DL</given-names>
                        </name>
</person-group>:
                    <article-title>Strengths, weaknesses, opportunities, and threats of using chatgpt in scientific research.</article-title>
                    <source>

                        <italic toggle="yes">Int. J. Technol. Des. Educ.</italic>
</source>
                    <year>2024</year>;<volume>7</volume>(<issue>1</issue>):<fpage>40</fpage>&#x2013;<lpage>58</lpage>.
                    <pub-id pub-id-type="doi">10.46328/ijte.618</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref17">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

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

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

                        <name name-style="western">
                            <surname>Fadel</surname>
                            <given-names>C</given-names>
                        </name>
</person-group>:
                    <article-title>Artificial Intelligence in education.</article-title>
                    <source>

                        <italic toggle="yes">Data Ethics: Building Trust: How Digital Technologies Can Serve Humanity.</italic>
</source>
                    <year>2023</year>; pp.<fpage>621</fpage>&#x2013;<lpage>653</lpage>.
                    <pub-id pub-id-type="doi">10.58863/20.500.12424/4276068</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref18">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

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

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

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

                        <etal/>
</person-group>:
                    <article-title>Ethics of AI in education: Towards a community-wide framework.</article-title>
                    <source>

                        <italic toggle="yes">Int. J. Artif. Intell. Educ.</italic>
</source>
                    <year>2021</year>;<volume>31</volume>(<issue>4</issue>):<fpage>935</fpage>&#x2013;<lpage>968</lpage>.
                    <pub-id pub-id-type="doi">10.1007/s40593-021-00239-1</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref19">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

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

                        <name name-style="western">
                            <surname>Tuomi</surname>
                            <given-names>I</given-names>
                        </name>
</person-group>:
                    <article-title>State of the art and practice in AI in education.</article-title>
                    <source>

                        <italic toggle="yes">Eur. J. Educ.</italic>
</source>
                    <year>2022</year>;<volume>57</volume>(<issue>4</issue>):<fpage>542</fpage>&#x2013;<lpage>570</lpage>.
                    <pub-id pub-id-type="doi">10.1111/ejed.12533</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref20">
                <mixed-citation publication-type="other">
                    <person-group person-group-type="author">

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

                        <name name-style="western">
                            <surname>McLaren</surname>
                            <given-names>BM</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Aleven</surname>
                            <given-names>V</given-names>
                        </name>
</person-group>:
                    <chapter-title>The ethical considerations of AI in education: What do teachers and students want?</chapter-title>
                    <source>

                        <italic toggle="yes">Proceedings of the 20th International Conference on Artificial Intelligence in Education.</italic>
</source>
                    <year>2019</year>; pp.<fpage>128</fpage>&#x2013;<lpage>139</lpage>.</mixed-citation>
            </ref>
            <ref id="ref52">
                <mixed-citation publication-type="book">
                    <person-group person-group-type="author">

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

                        <name name-style="western">
                            <surname>McLaren</surname>
                            <given-names>BM</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Aleven</surname>
                            <given-names>V</given-names>
                        </name>
</person-group>:
                    <article-title>Co-designing a real-time classroom orchestration tool to support teacher-AI complementarity.</article-title>
                    <source>

                        <italic toggle="yes">Journal of Learning Analytics.</italic>
</source>
                    <year>2019</year>;<volume>6</volume>(<issue>2</issue>):<fpage>27</fpage>&#x2013;<lpage>52</lpage>.
                    <publisher-name>Grantee Submission</publisher-name>.
                    <pub-id pub-id-type="doi">10.18608/jla.2019.62.3</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref51">
                <mixed-citation publication-type="other">
                    <person-group person-group-type="author">

                        <collab>IEEE</collab>
</person-group>:
                    <article-title>Ethically aligned design; A vision for prioritizing human well-being with autonomous and intelligent systems. (Version 1).</article-title>
                    <publisher-name>IEEE</publisher-name>.<year>2016</year>.
                    <ext-link ext-link-type="uri" xlink:href="https://standarts.ieee.org/wp-content/uploads/import/document/other/ead_v1.pdf">Reference Source</ext-link>
                </mixed-citation>
            </ref>
            <ref id="ref21">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Ifenthaler</surname>
                            <given-names>D</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Widanapathirana</surname>
                            <given-names>C</given-names>
                        </name>
</person-group>:
                    <article-title>Development and validation of a learning analytics framework: Two case studies using support Vector Machines.</article-title>
                    <source>

                        <italic toggle="yes">Technol. Knowl. Learn.</italic>
</source>
                    <year>2014</year>;<volume>19</volume>(<issue>1&#x2013;2</issue>):<fpage>221</fpage>&#x2013;<lpage>240</lpage>.
                    <pub-id pub-id-type="doi">10.1007/s10758-014-9226-4</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref56">
                <mixed-citation publication-type="book">
                    <person-group person-group-type="author">

                        <collab>ISTE</collab>
</person-group>:
                    <source>

                        <italic toggle="yes">ISTE standards for educators.</italic>
</source>
                    <publisher-name>International Society for Technology in Education</publisher-name>;<year>2017</year>.
                    <ext-link ext-link-type="uri" xlink:href="https://www.iste.org/standards/for-educators">https://www.iste.org/standards/for-educators</ext-link>
                </mixed-citation>
            </ref>
            <ref id="ref22">
                <mixed-citation publication-type="other">
                    <person-group person-group-type="author">

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

                        <name name-style="western">
                            <surname>Becker</surname>
                            <given-names>SA</given-names>
                        </name>

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

                        <etal/>
</person-group>:
                    <chapter-title>NMC Horizon Report: 2016 Higher Education Edition.</chapter-title>
                    <source>

                        <italic toggle="yes">NMC Horizon Report: 2016 Higher Education Edition - Learning &amp; Technology Library (LearnTechLib).</italic>
</source>
                    <year>2016, November 30</year>.
                    <ext-link ext-link-type="uri" xlink:href="https://www.learntechlib.org/p/171478/">Reference Source</ext-link>
                </mixed-citation>
            </ref>
            <ref id="ref23">
                <mixed-citation publication-type="book">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Koedinger</surname>
                            <given-names>KR</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Corbett</surname>
                            <given-names>AT</given-names>
                        </name>
</person-group>:
                    <chapter-title>Cognitive tutors: Technology bringing learning sciences to the classroom.</chapter-title>
                    <person-group person-group-type="editor">

                        <name name-style="western">
                            <surname>Sawyer</surname>
                            <given-names>RK</given-names>
                        </name>
</person-group>, editor.
                    <source>

                        <italic toggle="yes">The Cambridge Handbook of the Learning Sciences.</italic>
</source>
                    <publisher-name>Cambridge University Press</publisher-name>;<year>2006</year>; pp.<fpage>61</fpage>&#x2013;<lpage>78</lpage>.
                    <pub-id pub-id-type="doi">10.1017/cbo9780511816833.006</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref24">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Kulik</surname>
                            <given-names>JA</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Fletcher</surname>
                            <given-names>JD</given-names>
                        </name>
</person-group>:
                    <article-title>Effectiveness of intelligent tutoring systems.</article-title>
                    <source>

                        <italic toggle="yes">Rev. Educ. Res.</italic>
</source>
                    <year>2016</year>;<volume>86</volume>(<issue>1</issue>):<fpage>42</fpage>&#x2013;<lpage>78</lpage>.
                    <pub-id pub-id-type="doi">10.3102/0034654315581420</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref25">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Lipton</surname>
                            <given-names>ZC</given-names>
                        </name>
</person-group>:
                    <article-title>The mythos of model interpretability.</article-title>
                    <source>

                        <italic toggle="yes">Queue.</italic>
</source>
                    <year>2018</year>;<volume>16</volume>(<issue>3</issue>):<fpage>31</fpage>&#x2013;<lpage>57</lpage>.
                    <pub-id pub-id-type="doi">10.1145/3236386.3241340</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref26">
                <mixed-citation publication-type="book">
                    <person-group person-group-type="author">

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

                        <name name-style="western">
                            <surname>Bhagat</surname>
                            <given-names>KK</given-names>
                        </name>

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

                        <etal/>
</person-group>:
                    <chapter-title>The Potentials and Trends of Virtual Reality in Education.</chapter-title>
                    <person-group person-group-type="editor">

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

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

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

                        <etal/>
</person-group>, editors.
                    <source>

                        <italic toggle="yes">Virtual, Augmented, and Mixed Realities in Education. Smart Computing and Intelligence.</italic>
</source>
                    <publisher-loc>Singapore</publisher-loc>:
                    <publisher-name>Springer</publisher-name>;<year>2017</year>.
                    <pub-id pub-id-type="doi">10.1007/978-981-10-5490-7_7</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref27">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Livingstone</surname>
                            <given-names>S</given-names>
                        </name>
</person-group>:
                    <article-title>Children: A special case for privacy?</article-title>
                    <source>

                        <italic toggle="yes">InterMedia.</italic>
</source>
                    <year>2018</year>;<volume>46</volume>(<issue>1</issue>):<fpage>18</fpage>&#x2013;<lpage>23</lpage>.</mixed-citation>
            </ref>
            <ref id="ref28">
                <mixed-citation publication-type="book">
                    <person-group person-group-type="author">

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

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

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

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

                        <italic toggle="yes">Intelligence unleashed: An argument for AI in education.</italic>
</source>
                    <publisher-name>Pearson Education</publisher-name>;<year>2016</year>.</mixed-citation>
            </ref>
            <ref id="ref29">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Matthias</surname>
                            <given-names>A</given-names>
                        </name>
</person-group>:
                    <article-title>The responsibility gap: Ascribing responsibility for the actions of learning automata.</article-title>
                    <source>

                        <italic toggle="yes">Ethics Inf. Technol.</italic>
</source>
                    <year>2021</year>;<volume>6</volume>(<issue>3</issue>):<fpage>175</fpage>&#x2013;<lpage>183</lpage>.
                    <pub-id pub-id-type="doi">10.1007/s10676-004-3422-1</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref30">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

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

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

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

                        <etal/>
</person-group>:
                    <article-title>A survey on bias and fairness in machine learning.</article-title>
                    <source>

                        <italic toggle="yes">ACM Comput. Surv.</italic>
</source>
                    <year>2021</year>;<volume>54</volume>(<issue>6</issue>):<fpage>1</fpage>&#x2013;<lpage>35</lpage>.
                    <pub-id pub-id-type="doi">10.1145/3457607</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref31">
                <mixed-citation publication-type="other">
                    <collab>Montr&#x00e9;al Declaration for Responsible Development of Artificial Intelligence</collab>:
                    <article-title>Universit&#x00e9; de Montr&#x00e9;al.</article-title>
                    <year>2018</year>.</mixed-citation>
            </ref>
            <ref id="ref32">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

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

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

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

                        <etal/>
</person-group>:
                    <article-title>From what to how: An initial review of publicly available AI ethics tools, methods and research to translate principles into practices.</article-title>
                    <source>

                        <italic toggle="yes">SSRN Electron. J.</italic>
</source>
                    <year>2019</year>.
                    <pub-id pub-id-type="doi">10.2139/ssrn.3830348</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref33">
                <mixed-citation publication-type="book">
                    <person-group person-group-type="author">

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

                        <italic toggle="yes">Algorithms of oppression: How search engines reinforce racism.</italic>
</source>
                    <publisher-name>NYU Press</publisher-name>;<year>2018</year>.</mixed-citation>
            </ref>
            <ref id="ref34">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Pane</surname>
                            <given-names>JF</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Griffin</surname>
                            <given-names>BA</given-names>
                        </name>

                        <name name-style="western">
                            <surname>McCaffrey</surname>
                            <given-names>DF</given-names>
                        </name>

                        <etal/>
</person-group>:
                    <article-title>Effectiveness of cognitive tutor algebra I at scale.</article-title>
                    <source>

                        <italic toggle="yes">Educ. Eval. Policy Anal.</italic>
</source>
                    <year>2014</year>;<volume>36</volume>(<issue>2</issue>):<fpage>127</fpage>&#x2013;<lpage>144</lpage>.
                    <pub-id pub-id-type="doi">10.3102/0162373713507480</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref35">
                <mixed-citation publication-type="book">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Pane</surname>
                            <given-names>JF</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Steiner</surname>
                            <given-names>ED</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Baird</surname>
                            <given-names>MD</given-names>
                        </name>

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

                        <italic toggle="yes">Continued progress: Promising evidence on personalized learning.</italic>
</source>
                    <publisher-name>RAND Corporation</publisher-name>;<year>2017</year>.
                    <pub-id pub-id-type="doi">10.7249/RR1365</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref36">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

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

                        <name name-style="western">
                            <surname>Ventura</surname>
                            <given-names>S</given-names>
                        </name>
</person-group>:
                    <article-title>Educational Data Science in massive open online courses.</article-title>
                    <source>

                        <italic toggle="yes">Wiley Interdiscip. Rev.: Data Min. Knowl. Discov.</italic>
</source>
                    <year>2016</year>;<volume>7</volume>(<issue>1</issue>).
                    <pub-id pub-id-type="doi">10.1002/widm.1187</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref37">
                <mixed-citation publication-type="book">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Selwyn</surname>
                            <given-names>N</given-names>
                        </name>
</person-group>:
                    <chapter-title>Data-driven education: Mapping the terrain.</chapter-title>
                    <person-group person-group-type="editor">

                        <name name-style="western">
                            <surname>Cavanagh</surname>
                            <given-names>JM</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Goel</surname>
                            <given-names>MC</given-names>
                        </name>
</person-group>, editors.
                    <source>

                        <italic toggle="yes">The International Encyclopedia of Digital Communication and Society.</italic>
</source>
                    <publisher-name>Wiley</publisher-name>;<year>2020</year>; pp.<fpage>1</fpage>&#x2013;<lpage>10</lpage>.
                    <pub-id pub-id-type="doi">10.1002/9781118767771.wbiedcs098</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref38">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Siemens</surname>
                            <given-names>G</given-names>
                        </name>
</person-group>:
                    <article-title>Learning analytics: The emergence of a discipline.</article-title>
                    <source>

                        <italic toggle="yes">Am. Behav. Sci.</italic>
</source>
                    <year>2013</year>;<volume>57</volume>(<issue>10</issue>):<fpage>1380</fpage>&#x2013;<lpage>1400</lpage>.
                    <pub-id pub-id-type="doi">10.1177/0002764213498851</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref39">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

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

                        <name name-style="western">
                            <surname>Long</surname>
                            <given-names>P</given-names>
                        </name>
</person-group>:
                    <article-title>Penetrating the fog: Analytics in learning and education.</article-title>
                    <source>

                        <italic toggle="yes">Educ. Rev.</italic>
</source>
                    <year>2011</year>;<volume>46</volume>(<issue>5</issue>):<fpage>30</fpage>&#x2013;<lpage>40</lpage>.</mixed-citation>
            </ref>
            <ref id="ref40">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Tarran</surname>
                            <given-names>B</given-names>
                        </name>
</person-group>:
                    <article-title>Cambridge Analytica, Facebook and data privacy: Why should we care?</article-title>
                    <source>

                        <italic toggle="yes">Significance.</italic>
</source>
                    <year>2018</year>;<volume>15</volume>(<issue>3</issue>):<fpage>4</fpage>&#x2013;<lpage>5</lpage>.
                    <pub-id pub-id-type="doi">10.1111/j.1740-9713.2018.01139.x</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref41">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Tene</surname>
                            <given-names>O</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Polonetsky</surname>
                            <given-names>J</given-names>
                        </name>
</person-group>:
                    <article-title>Big data for all: Privacy and user control in the age of analytics.</article-title>
                    <source>

                        <italic toggle="yes">Nw. J. Tech. Intell. Prop.</italic>
</source>
                    <year>2013</year>;<volume>11</volume>(<issue>5</issue>):<fpage>239</fpage>&#x2013;<lpage>273</lpage>.
                    <ext-link ext-link-type="uri" xlink:href="https://scholarlycommons.law.northwestern.edu/njtip/vol11/iss5/1/">Reference Source</ext-link>
                </mixed-citation>
            </ref>
            <ref id="ref42">
                <mixed-citation publication-type="book">
                    <collab>UNESCO</collab>:
                    <source>

                        <italic toggle="yes">Artificial intelligence in education: Challenges and opportunities for sustainable development.</italic>
</source>
                    <publisher-name>United Nations Educational, Scientific and Cultural Organization</publisher-name>;<year>2019</year>.
                    <ext-link ext-link-type="uri" xlink:href="https://www.unesco.org/en/articles/challenges-and-opportunities-artificial-intelligence-education">Reference Source</ext-link>
                </mixed-citation>
            </ref>
            <ref id="ref54">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Van den Broek</surname>
                            <given-names>S</given-names>
                        </name>

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

                        <name name-style="western">
                            <surname>Wit</surname>
                            <given-names>J</given-names>
                            <prefix>de</prefix>
                        </name>

                        <etal/>
</person-group>:
                    <article-title>Exploring the supportive role of artificial intelligence in participatory design: a systematic review.</article-title>
                    <source>In Proceedings of the Participatory Design Conference</source>
                    <year>2024, August</year>: Exploratory Papers and Workshops - Volume<volume>2</volume>(pp.<fpage>37</fpage>&#x2013;<lpage>44</lpage>).</mixed-citation>
            </ref>
            <ref id="ref43">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>VanLehn</surname>
                            <given-names>K</given-names>
                        </name>
</person-group>:
                    <article-title>The relative effectiveness of human tutoring, intelligent tutoring systems, and other tutoring systems.</article-title>
                    <source>

                        <italic toggle="yes">Educ. Psychol.</italic>
</source>
                    <year>2011</year>;<volume>46</volume>(<issue>4</issue>):<fpage>197</fpage>&#x2013;<lpage>221</lpage>.
                    <pub-id pub-id-type="doi">10.1080/00461520.2011.611369</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref44">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Williamson</surname>
                            <given-names>B</given-names>
                        </name>
</person-group>:
                    <article-title>Learning analytics: Monitored, predicted, and nudged by data.</article-title>
                    <source>

                        <italic toggle="yes">Policy Futures Educ.</italic>
</source>
                    <year>2017</year>;<volume>15</volume>(<issue>5</issue>):<fpage>641</fpage>&#x2013;<lpage>652</lpage>.
                    <pub-id pub-id-type="doi">10.1177/1478210317715795</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref45">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Woolf</surname>
                            <given-names>BP</given-names>
                        </name>

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

                        <name name-style="western">
                            <surname>Chaudhri</surname>
                            <given-names>VK</given-names>
                        </name>

                        <etal/>
</person-group>:
                    <article-title>Ai Grand Challenges for Education.</article-title>
                    <source>

                        <italic toggle="yes">AI Mag.</italic>
</source>
                    <year>2013</year>;<volume>34</volume>(<issue>4</issue>):<fpage>66</fpage>&#x2013;<lpage>84</lpage>.
                    <pub-id pub-id-type="doi">10.1609/aimag.v34i4.2490</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref46">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

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

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

                        <name name-style="western">
                            <surname>Huang</surname>
                            <given-names>M</given-names>
                        </name>
</person-group>:
                    <article-title>AI revolution and its impact on businesses and economies.</article-title>
                    <source>

                        <italic toggle="yes">J. Technol. Adv.</italic>
</source>
                    <year>2023</year>;<volume>12</volume>(<issue>1</issue>):<fpage>1</fpage>&#x2013;<lpage>8</lpage>.</mixed-citation>
            </ref>
            <ref id="ref47">
                <mixed-citation publication-type="book">
                    <person-group person-group-type="author">

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

                        <name name-style="western">
                            <surname>Gleason</surname>
                            <given-names>NW</given-names>
                        </name>
</person-group>:
                    <chapter-title>The impact of AI on education.</chapter-title>
                    <person-group person-group-type="editor">

                        <name name-style="western">
                            <surname>Gleason</surname>
                            <given-names>NW</given-names>
                        </name>
</person-group>, editor.
                    <source>

                        <italic toggle="yes">Higher Education in the Era of the Fourth Industrial Revolution.</italic>
</source>
                    <publisher-name>Palgrave Macmillan</publisher-name>;<year>2020</year>; pp.<fpage>101</fpage>&#x2013;<lpage>124</lpage>.
                    <pub-id pub-id-type="doi">10.1007/978-981-13-0194-0_6</pub-id>
                </mixed-citation>
            </ref>
            <ref id="ref48">
                <mixed-citation publication-type="journal">
                    <person-group person-group-type="author">

                        <name name-style="western">
                            <surname>Zawacki-Richter</surname>
                            <given-names>O</given-names>
                        </name>

                        <name name-style="western">
                            <surname>Mar&#x00ed;n</surname>
                            <given-names>VI</given-names>
                        </name>

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

                        <etal/>
</person-group>:
                    <article-title>Systematic review of research on Artificial Intelligence Applications in higher education &#x2013; where are the educators?</article-title>
                    <source>

                        <italic toggle="yes">Int. J. Educ. Technol. High. Educ.</italic>
</source>
                    <year>2019</year>;<volume>16</volume>(<issue>1</issue>):<fpage>1</fpage>&#x2013;<lpage>27</lpage>.
                    <pub-id pub-id-type="doi">10.1186/s41239-019-0171-0</pub-id>
                </mixed-citation>
            </ref>
        </ref-list>
    </back>
    <sub-article article-type="reviewer-report" id="report371275">
        <front-stub>
            <article-id pub-id-type="doi">10.5256/f1000research.175814.r371275</article-id>
            <title-group>
                <article-title>Reviewer response for version 1</article-title>
            </title-group>
            <contrib-group>
                <contrib contrib-type="author">
                    <name>
                        <surname>Opesemowo</surname>
                        <given-names>Oluwaseyi Aina Gbolade</given-names>
                    </name>
                    <xref ref-type="aff" rid="r371275a1">1</xref>
                    <role>Referee</role>
                    <uri content-type="orcid">https://orcid.org/0000-0003-0242-7027</uri>
                </contrib>
                <aff id="r371275a1">
                    <label>1</label>University of Johannesburg, Johannesburg, South Africa</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>7</day>
                <month>11</month>
                <year>2025</year>
            </pub-date>
            <permissions>
                <copyright-statement>Copyright: &#x00a9; 2025 Opesemowo OAG</copyright-statement>
                <copyright-year>2025</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>
                <license>
                    <license-p>The author(s) is/are employees of the US Government and therefore domestic copyright protection in USA does not apply to this work. The work may be protected under the copyright laws of other jurisdictions when used in those jurisdictions.</license-p>
                </license>
            </permissions>
            <related-article ext-link-type="doi" id="relatedArticleReport371275" related-article-type="peer-reviewed-article" xlink:href="10.12688/f1000research.160011.1"/>
            <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>I am pleased to have reviewed this manuscript titled &#x201c;Navigating the Ethical Landscape of AI Integration in Education: Balancing Innovation and Responsibility&#x201d; This assessment combines structural, conceptual, and methodological critique anchored in peer review best practices and aligned with academic standards for review and conceptual analysis papers.</p>
            <p> Abstract</p>
            <p> Strengths 
                <list list-type="bullet">
                    <list-item>
                        <p>The title is well-formulated, concise, and clearly communicates the dual focus on 
                            <italic>AI ethics</italic> and 
                            <italic>education</italic>.</p>
                    </list-item>
                    <list-item>
                        <p>The abstract effectively summarises the main argument, highlighting both opportunities and ethical risks of AI in education (privacy, bias, transparency, equity).</p>
                    </list-item>
                    <list-item>
                        <p>The emphasis on balancing innovation and responsibility is a timely and relevant topic in global educational discourse.</p>
                    </list-item>
                </list> Weaknesses 
                <list list-type="bullet">
                    <list-item>
                        <p>The abstract is descriptive rather than analytical; it summarises known issues but does not indicate how the paper contributes new insights or frameworks.</p>
                    </list-item>
                    <list-item>
                        <p>The absence of methodological framing (e.g., narrative review, conceptual synthesis) undermines transparency.</p>
                    </list-item>
                    <list-item>
                        <p>Phrases such as &#x201c;AI offers adaptive tutoring systems and personalised learning&#x201d; are generic, making the abstract sound like a policy brief rather than a scholarly article.</p>
                    </list-item>
                    <list-item>
                        <p>The authors should specify the type of analysis (theoretical, integrative, or comparative) conducted and summarise the key findings or arguments, rather than listing general goals.</p>
                    </list-item>
                    <list-item>
                        <p>Failure to address any research gap.</p>
                    </list-item>
                </list> Introduction</p>
            <p> Strengths 
                <list list-type="bullet">
                    <list-item>
                        <p>The introduction outlines the global relevance of AI in transforming education through personalised systems and adaptive learning tools.</p>
                    </list-item>
                    <list-item>
                        <p>The section includes relevant early literature (Siemens, 2013; Luckin et al., 2016) and establishes the ethical concerns around bias, privacy, and transparency.</p>
                    </list-item>
                </list> Weaknesses 
                <list list-type="bullet">
                    <list-item>
                        <p>The section reads more like a literature overview than a problem-driven introduction. The problem statement is implicit and lacks a focused research question.</p>
                    </list-item>
                    <list-item>
                        <p>The sources cited are outdated, essentially predating the era of large language models (LLMs) and generative AI, which have radically altered ethical discussions in 2023&#x2013;2025.</p>
                    </list-item>
                    <list-item>
                        <p>The introduction would benefit from integrating recent debates on generative AI tools (e.g., ChatGPT, Claude, Gemini) in educational contexts.</p>
                    </list-item>
                    <list-item>
                        <p>There is no explicit rationale or objective statement&#x2014;the section concludes descriptively rather than asserting the paper&#x2019;s unique purpose or contribution.</p>
                    </list-item>
                </list> The Promise of AI in Education</p>
            <p> Strengths 
                <list list-type="bullet">
                    <list-item>
                        <p>The section systematically categorises AI applications, including personalised learning platforms, adaptive assessment tools, intelligent tutoring systems, administrative automation, and learning analytics (Table 1).</p>
                    </list-item>
                    <list-item>
                        <p>It includes illustrative examples (Knewton, ALEKS, DreamBox, Cognitive Tutor), demonstrating familiarity with established educational AI tools.</p>
                    </list-item>
                </list> Weaknesses 
                <list list-type="bullet">
                    <list-item>
                        <p>The discussion is excessively repetitive and lacks critical depth; most claims are descriptive summaries of existing literature.</p>
                    </list-item>
                    <list-item>
                        <p>Assertions about AI&#x2019;s benefits (&#x201c;AI holds the promise to revolutionise education&#x201d;) are overstated and unqualified by empirical evidence or contrasting perspectives.</p>
                    </list-item>
                    <list-item>
                        <p>Citations like Siemens (2013) and Luckin et al. (2016) are historically foundational but insufficient to reflect the post-2023 AI landscape.</p>
                    </list-item>
                    <list-item>
                        <p>The section should discuss the ethical implications arising from specific applications, such as adaptive learning data biases or privacy issues in tutoring systems.</p>
                    </list-item>
                    <list-item>
                        <p>The absence of data or synthesised meta-analytic findings reduces scholarly credibility.</p>
                    </list-item>
                </list> </p>
            <p> Ethical Challenges in AI Integration</p>
            <p> Strengths 
                <list list-type="bullet">
                    <list-item>
                        <p>The section identifies core ethical issues, including data privacy and security, algorithmic bias, and transparency/accountability, which are consistent with standard frameworks (IEEE, EU AI Ethics Guidelines).</p>
                    </list-item>
                    <list-item>
                        <p>The structure is logical, and the examples (e.g., unauthorised data access, black-box algorithms) illustrate conceptual understanding.</p>
                    </list-item>
                    <list-item>
                        <p>The authors correctly emphasise the need for institutional policies and bias audits.</p>
                    </list-item>
                </list> Weaknesses 
                <list list-type="bullet">
                    <list-item>
                        <p>This section repeats ideas verbatim from earlier paragraphs without introducing new insight.</p>
                    </list-item>
                    <list-item>
                        <p>Most discussions are descriptive restatements of existing ethical guidelines (Floridi et al., 2018; Williamson, 2017) rather than critical syntheses or comparative evaluations.</p>
                    </list-item>
                    <list-item>
                        <p>The section lacks context-specific examples (e.g., AI in secondary vs. higher education, cross-national data frameworks).</p>
                    </list-item>
                    <list-item>
                        <p>No mention of AI literacy, digital autonomy, or emotional AI, which are contemporary ethical themes.</p>
                    </list-item>
                    <list-item>
                        <p>Overall, this section contributes little beyond restating well-established principles.</p>
                    </list-item>
                </list> Current Implementations and Ethical Frameworks</p>
            <p> Strengths 
                <list list-type="bullet">
                    <list-item>
                        <p>The section documents recognised frameworks such as IEEE 2016, EU Commission 2018, and Floridi&#x2019;s AI4People framework, lending authority to the ethical grounding.</p>
                    </list-item>
                    <list-item>
                        <p>References to teacher professional development and data governance are appropriately highlighted.</p>
                    </list-item>
                </list> Weaknesses 
                <list list-type="bullet">
                    <list-item>
                        <p>The paper lacks methodological structure for reviewing frameworks&#x2014;no criteria or analytical dimensions are used (e.g., comparative evaluation, adoption challenges).</p>
                    </list-item>
                    <list-item>
                        <p>The section merely enumerates guidelines without providing critical analysis or integrating them into educational practice.</p>
                    </list-item>
                    <list-item>
                        <p>It overlooks recent frameworks (2022&#x2013;2025), such as UNESCO&#x2019;s Recommendation on the Ethics of AI (2021) and the 
                            <italic>OECD AI Principles (2022)</italic>.</p>
                    </list-item>
                    <list-item>
                        <p>There is no evaluation matrix comparing ethical frameworks by focus, scope, or applicability to education; such a table would add scholarly rigour.</p>
                    </list-item>
                </list> Balancing Innovation and Ethical Responsibility</p>
            <p> Strengths 
                <list list-type="bullet">
                    <list-item>
                        <p>The authors attempt to move from diagnosis to prescription, suggesting actionable strategies: participatory design, ethical impact assessments, continuous professional development, transparent communication, and regulatory frameworks.</p>
                    </list-item>
                    <list-item>
                        <p>The proposed creation of ethical review boards and student digital literacy programs aligns with best practices in AI governance.</p>
                    </list-item>
                    <list-item>
                        <p>The section is well-organised and flows logically, demonstrating applied awareness of AI ethics.</p>
                    </list-item>
                </list> Weaknesses 
                <list list-type="bullet">
                    <list-item>
                        <p>These recommendations are generic and not tailored to the realities of educational systems or stakeholders.</p>
                    </list-item>
                    <list-item>
                        <p>The section lacks implementation details (e.g., how to operationalise participatory design in K&#x2013;12 schools or universities).</p>
                    </list-item>
                    <list-item>
                        <p>The authors do not provide any new model, taxonomy, or framework&#x2014;as reviewers noted, the paper reads as a collection of widely accepted principles rather than a scholarly contribution.</p>
                    </list-item>
                    <list-item>
                        <p>Figure 1 (AI Ethical Review Process) is conceptually relevant but underdeveloped, lacking sufficient explanatory commentary and theoretical linkage.</p>
                    </list-item>
                </list> Conclusion</p>
            <p> Strengths 
                <list list-type="bullet">
                    <list-item>
                        <p>The conclusion reiterates the central argument that AI in education offers benefits but must be guided by transparency, fairness, and accountability.</p>
                    </list-item>
                    <list-item>
                        <p>The emphasis on collaboration among educators, policymakers, developers, and researchers reflects a holistic understanding of AI ethics governance.</p>
                    </list-item>
                </list> Weaknesses 
                <list list-type="bullet">
                    <list-item>
                        <p>The conclusion is overly repetitive, restating prior sections rather than synthesising them.</p>
                    </list-item>
                    <list-item>
                        <p>It lacks critical reflection or originality&#x2014;no new conceptual model, evaluative insight, or forward-looking argument is provided.</p>
                    </list-item>
                    <list-item>
                        <p>The authors claim to offer &#x201c;practical recommendations,&#x201d; but none are clearly operationalised or prioritised.</p>
                    </list-item>
                    <list-item>
                        <p>The final paragraph merges ethical rhetoric with aspirational statements, lacking analytical closure or future research direction.</p>
                    </list-item>
                </list> References</p>
            <p> Consequently, the study was skewed towards other continents, leaving the African continent behind. Due to this, the study may be biased rather than providing a balanced perspective. The study could also benefit from these papers.</p>
            <p> [Reference 1]</p>
            <p> [Reference 2]</p>
            <p> Summary of Peer Review 
                <list list-type="bullet">
                    <list-item>
                        <p>No methodological grounding or structure for the review process.</p>
                    </list-item>
                    <list-item>
                        <p>Outdated and unbalanced literature (pre-ChatGPT era).</p>
                    </list-item>
                    <list-item>
                        <p>Overgeneralization and lack of critical depth.</p>
                    </list-item>
                    <list-item>
                        <p>No original contribution (no new framework or conceptual model).</p>
                    </list-item>
                    <list-item>
                        <p>Potential AI-generated prose is indicated by stylistic uniformity and generic phrasing.</p>
                    </list-item>
                </list> These critiques align fully with this assessment. The article remains conceptually relevant, but it is academically superficial.</p>
            <p> Final Recommendation: Major Revision</p>
            <p> Required Revisions (for Resubmission) 
                <list list-type="order">
                    <list-item>
                        <p>Declare Methodology &#x2013; Specify whether the review is narrative, scoping, or conceptual. Include inclusion/exclusion criteria and search strategy.</p>
                    </list-item>
                    <list-item>
                        <p>Update Literature &#x2013; Integrate recent works (2023&#x2013;2025) on 
                            <italic>generative AI, LLM ethics, and classroom deployment</italic> (e.g., UNESCO 2023, Chiu &amp; Lim 2024, Holmes et al. 2024).</p>
                    </list-item>
                    <list-item>
                        <p>Add Analytical Framework &#x2013; Propose or adapt an ethical model specific to 
                            <italic>AI in education</italic> (e.g., &#x201c;Transparency&#x2013;Accountability&#x2013;Inclusivity&#x2013;Responsibility [TAIR] Framework&#x201d;).</p>
                    </list-item>
                    <list-item>
                        <p>Include Comparative Evaluation &#x2013; Critically assess at least three ethical frameworks or case studies (IEEE vs. EU AI Act vs. UNESCO 2023).</p>
                    </list-item>
                    <list-item>
                        <p>Strengthen Discussion &#x2013; Add context-specific examples (K&#x2013;12, higher education, developing contexts) and contrast opportunities with ethical risks.</p>
                    </list-item>
                </list>
            </p>
            <p>Is the review written in accessible language?</p>
            <p>Yes</p>
            <p>Are all factual statements correct and adequately supported by citations?</p>
            <p>Yes</p>
            <p>Are the conclusions drawn appropriate in the context of the current research literature?</p>
            <p>Yes</p>
            <p>Is the topic of the review discussed comprehensively in the context of the current literature?</p>
            <p>Yes</p>
            <p>Reviewer Expertise:</p>
            <p>AI in Education, Educational Assessment, Psychometric, SDG 4</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-371275-1">
                    <label>1</label>
                    <mixed-citation publication-type="journal">
                        <person-group person-group-type="author"/>:
                        <article-title>Artificial Intelligence in Education, Bridging Community Gap: A Phenomenological Approach</article-title>.
                        <source>
                            <italic>International Journal of New Education</italic>
                        </source>.<year>2024</year>;
                        <elocation-id>10.24310/ijne.14.2024.20505</elocation-id>
                        <pub-id pub-id-type="doi">10.24310/ijne.14.2024.20505</pub-id>
                    </mixed-citation>
                </ref>
                <ref id="rep-ref-371275-2">
                    <label>2</label>
                    <mixed-citation publication-type="journal">
                        <person-group person-group-type="author"/>:
                        <article-title>Artificial Intelligence in Mathematics Education</article-title>.
                        <elocation-id>10.4018/978-1-6684-7366-5.ch084</elocation-id>
                        <fpage>1</fpage>-<lpage>18</lpage>
                        <pub-id pub-id-type="doi">10.4018/978-1-6684-7366-5.ch084</pub-id>
                    </mixed-citation>
                </ref>
            </ref-list>
        </back>
    </sub-article>
    <sub-article article-type="reviewer-report" id="report393518">
        <front-stub>
            <article-id pub-id-type="doi">10.5256/f1000research.175814.r393518</article-id>
            <title-group>
                <article-title>Reviewer response for version 1</article-title>
            </title-group>
            <contrib-group>
                <contrib contrib-type="author">
                    <name>
                        <surname>Vickers</surname>
                        <given-names>Darby</given-names>
                    </name>
                    <xref ref-type="aff" rid="r393518a1">1</xref>
                    <role>Referee</role>
                    <uri content-type="orcid">https://orcid.org/0000-0003-3284-2520</uri>
                </contrib>
                <aff id="r393518a1">
                    <label>1</label>University of San Diego, San Diego, California, USA</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>8</month>
                <year>2025</year>
            </pub-date>
            <permissions>
                <copyright-statement>Copyright: &#x00a9; 2025 Vickers D</copyright-statement>
                <copyright-year>2025</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="relatedArticleReport393518" related-article-type="peer-reviewed-article" xlink:href="10.12688/f1000research.160011.1"/>
            <custom-meta-group>
                <custom-meta>
                    <meta-name>recommendation</meta-name>
                    <meta-value>reject</meta-value>
                </custom-meta>
            </custom-meta-group>
        </front-stub>
        <body>
            <p>The vast majority of the literature cited in this review is from before the release of ChatGPT-3.5 and similar transformer models. This means that much of the literature is out of date, because many of the new applications of AI in education use LLMs and other sorts of genAI. It is fine for the authors to cite some older sources, but the vast majority of citations are far too old. Moreover, there are several places where the authors cite a single study to back up a controversial claim (when there are studies that say the opposite) and they fail to acknowledge that there is contrary evidence. For example, they cite Pane et al. 2017 to talk about the promise of personalized learning, when there is an explosion of studies on both sides of this issue that are more recent.</p>
            <p> Moreover, there doesn't seem to be anything new coming out of this article. The recommendations are bland and generic. There is no deep engagement with the ethical issues. It is not adding anything to the literature either by making an original argument or by doing a comprehensive survey of the current literature.</p>
            <p>Is the review written in accessible language?</p>
            <p>Yes</p>
            <p>Are all factual statements correct and adequately supported by citations?</p>
            <p>Partly</p>
            <p>Are the conclusions drawn appropriate in the context of the current research literature?</p>
            <p>Partly</p>
            <p>Is the topic of the review discussed comprehensively in the context of the current literature?</p>
            <p>No</p>
            <p>Reviewer Expertise:</p>
            <p>Ethics, ethics of artificial intelligence, philosophy of education</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="report393516">
        <front-stub>
            <article-id pub-id-type="doi">10.5256/f1000research.175814.r393516</article-id>
            <title-group>
                <article-title>Reviewer response for version 1</article-title>
            </title-group>
            <contrib-group>
                <contrib contrib-type="author">
                    <name>
                        <surname>Rawas</surname>
                        <given-names>Soha</given-names>
                    </name>
                    <xref ref-type="aff" rid="r393516a1">1</xref>
                    <role>Referee</role>
                    <uri content-type="orcid">https://orcid.org/0000-0001-5128-6529</uri>
                </contrib>
                <aff id="r393516a1">
                    <label>1</label>Beirut Arab University, Beirut, Lebanon</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>2025</year>
            </pub-date>
            <permissions>
                <copyright-statement>Copyright: &#x00a9; 2025 Rawas S</copyright-statement>
                <copyright-year>2025</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="relatedArticleReport393516" related-article-type="peer-reviewed-article" xlink:href="10.12688/f1000research.160011.1"/>
            <custom-meta-group>
                <custom-meta>
                    <meta-name>recommendation</meta-name>
                    <meta-value>reject</meta-value>
                </custom-meta>
            </custom-meta-group>
        </front-stub>
        <body>
            <p>
                <bold>Full Report</bold>
            </p>
            <p> 
                <bold>Summary</bold>
            </p>
            <p> This article discusses the ethical implications of integrating AI into education and advocates for the application of ethical frameworks such as IEEE and EU guidelines. It addresses critical themes like data privacy, algorithmic bias, transparency, and inclusive practices, and provides conceptual recommendations such as participatory design and ethical review boards.</p>
            <p> </p>
            <p> </p>
            <p> 
                <bold>Major Issues Requiring Attention</bold>
            </p>
            <p> 
                <bold>1. Lack of Methodological Grounding &#x2013; 
                    <italic>Not Scientifically Sound</italic>
                </bold>
            </p>
            <p> The manuscript presents itself as a review, yet lacks any declared 
                <bold>methodology, selection process, inclusion/exclusion criteria, or structured analysis</bold>. It does not follow the standards of a 
                <bold>systematic, scoping, or even well-structured narrative review</bold>. This omission severely limits its reproducibility and credibility as a scholarly review article.</p>
            <p> 
                <bold>Must be addressed</bold>: Clearly define the review method used. Introduce a structure for how sources were selected and analyzed. Without this, the work cannot be considered academically valid for publication.</p>
            <p> </p>
            <p> </p>
            <p> 
                <bold>2. Outdated and Limited Literature Review</bold>
            </p>
            <p> While several references are relevant, the review omits 
                <bold>recent empirical studies and policy frameworks (2022&#x2013;2024)</bold> related to generative AI, LLMs (like ChatGPT), and emerging ethical challenges in actual classroom contexts. The paper also lacks engagement with counterpoints or critical debate, which weakens its contribution.</p>
            <p> Must be addressed: Integrate up-to-date empirical studies and expand on limitations or real-world complexities of ethical AI deployment.</p>
            <p> </p>
            <p> </p>
            <p> 
                <bold>3. Overgeneralized and Unsupported Claims</bold>
            </p>
            <p> Many statements are vague, overoptimistic, or lack empirical or theoretical backing (e.g., &#x201c;AI promotes equity&#x201d; or &#x201c;AI builds trust&#x201d;). Assertions are made without demonstrating critical analysis or referencing rigorous sources.</p>
            <p> 
                <bold>Must be addressed</bold>: Reframe claims based on concrete evidence. Avoid broad, unqualified conclusions. Include balanced discussions acknowledging risks and failures of AI in education.</p>
            <p> </p>
            <p> </p>
            <p> 
                <bold>4. Lack of Novel Contribution</bold>
            </p>
            <p> The paper mostly summarizes well-known ethical concerns and frameworks without offering a new model, taxonomy, or framework. There is no comparative analysis, visual synthesis (except one underdeveloped figure), or original insight.</p>
            <p> 
                <bold>Must be addressed</bold>: To be publishable, the authors need to either propose a new ethical model, analyze real-world implementations, or derive a structured framework for educators and policymakers.</p>
            <p> </p>
            <p> </p>
            <p> 
                <bold>Final Evaluation</bold>
            </p>
            <p> This article raises timely ethical concerns but does not meet the academic standards of a peer-reviewed journal in its current form. Without a methodological backbone, critical synthesis, and original insight, it cannot be considered scientifically sound. I recommend rejection unless the article is fundamentally restructured and rewritten.</p>
            <p>Is the review written in accessible language?</p>
            <p>Yes</p>
            <p>Are all factual statements correct and adequately supported by citations?</p>
            <p>Partly</p>
            <p>Are the conclusions drawn appropriate in the context of the current research literature?</p>
            <p>Partly</p>
            <p>Is the topic of the review discussed comprehensively in the context of the current literature?</p>
            <p>No</p>
            <p>Reviewer Expertise:</p>
            <p>rtificial Intelligence in Education, Educational Technology, Human&#x2013;Computer Interaction, Ethical Implications of AI, Generative AI in Higher Education</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="report374207">
        <front-stub>
            <article-id pub-id-type="doi">10.5256/f1000research.175814.r374207</article-id>
            <title-group>
                <article-title>Reviewer response for version 1</article-title>
            </title-group>
            <contrib-group>
                <contrib contrib-type="author">
                    <name>
                        <surname>Karpouzis</surname>
                        <given-names>Kostas</given-names>
                    </name>
                    <xref ref-type="aff" rid="r374207a1">1</xref>
                    <role>Referee</role>
                    <uri content-type="orcid">https://orcid.org/0000-0002-4615-6751</uri>
                </contrib>
                <aff id="r374207a1">
                    <label>1</label>Panteion University of Social and Political Sciences, Athens, Greece</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>30</day>
                <month>4</month>
                <year>2025</year>
            </pub-date>
            <permissions>
                <copyright-statement>Copyright: &#x00a9; 2025 Karpouzis K</copyright-statement>
                <copyright-year>2025</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="relatedArticleReport374207" related-article-type="peer-reviewed-article" xlink:href="10.12688/f1000research.160011.1"/>
            <custom-meta-group>
                <custom-meta>
                    <meta-name>recommendation</meta-name>
                    <meta-value>reject</meta-value>
                </custom-meta>
            </custom-meta-group>
        </front-stub>
        <body>
            <p>While the manuscript deals with tackles an important topic, i.e., the ethical challenges of integrating AI into educational contexts, it suffers significantly from superficial engagement and excessive generalizations. The authors present an overview of well-known ethical issues, such as privacy, transparency, and equity, yet fail to offer novel insights or a nuanced exploration beyond existing frameworks. The extensive reliance on standard references and general statements weakens the manuscript's originality, reducing it to a summary rather than a meaningful contribution to the discourse. Additionally, there is a noticeable absence of empirical evidence or detailed case studies, resulting in a paper that feels theoretical, abstract, and detached from practical realities.</p>
            <p> </p>
            <p> Furthermore, the manuscript exhibits stylistic features which are strongly indicative of generative AI usage. Its repetitive phrasing, generic language patterns, and lack of in-depth analytical reflection suggest significant dependence on AI-assisted drafting. While generative AI can be an acceptable tool for initial drafts or ideation, this manuscript would greatly benefit from thorough human revision to enhance specificity, depth, and originality. To be suitable for publication, the authors need to critically reassess the manuscript&#x2019;s theoretical framework, substantially strengthen the empirical grounding, clearly articulate practical implications, and transparently acknowledge and justify any generative AI assistance utilized during the writing process. In addition, introducing some newer references would increase the relevance of this work to contemporary ethical discussions; as it stands, only two of the references included are from the last five years.</p>
            <p>Is the review written in accessible language?</p>
            <p>Partly</p>
            <p>Are all factual statements correct and adequately supported by citations?</p>
            <p>Yes</p>
            <p>Are the conclusions drawn appropriate in the context of the current research literature?</p>
            <p>Partly</p>
            <p>Is the topic of the review discussed comprehensively in the context of the current literature?</p>
            <p>Partly</p>
            <p>Reviewer Expertise:</p>
            <p>artificial intelligence; ai ethics</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>
</article>
