https://doi.org/10.7490/f1000research.1112661.1
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Sverchkov Y, Gasch A and Craven M. Learning context-specific nested effects models from gene knockdown data [version 1; not peer reviewed]. F1000Research 2016, 5(ISCB Comm J):1773 (poster) (https://doi.org/10.7490/f1000research.1112661.1)
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Learning context-specific nested effects models from gene knockdown data

Yuriy Sverchkov1, Audrey Gasch, Mark Craven
Author Affiliations
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Published 20 Jul 2016

Learning context-specific nested effects models from gene knockdown data

[version 1; not peer reviewed]

Yuriy Sverchkov1, Audrey Gasch, Mark Craven
Author Affiliations
1 University of Wisconsin-Madison, USA
Presented at
International Conference on Intelligent Systems for Molecular Biology (ISMB) 2016
Abstract
Competing Interests

No competing interests were disclosed

Keywords
network, model, machine learning, nested effects model, regulation, profile data
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