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Nathaniel Huber-Fliflet

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Explainable Text Classification Techniques in Legal Document Review: Locating Rationales without Using Human Annotated Training Text Snippets

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Nov 15, 2023
Christian Mahoney, Peter Gronvall, Nathaniel Huber-Fliflet, Jianping Zhang

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CNN Application in Detection of Privileged Documents in Legal Document Review

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Feb 09, 2021
Rishi Chhatwal, Robert Keeling, Peter Gronvall, Nathaniel Huber-Fliflet, Jianping Zhang, Haozhen Zhao

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Image Analytics for Legal Document Review: A Transfer Learning Approach

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Dec 19, 2019
Nathaniel Huber-Fliflet, Fusheng Wei, Haozhen Zhao, Han Qin, Shi Ye, Amy Tsang

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A Framework for Explainable Text Classification in Legal Document Review

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Dec 19, 2019
Christian J. Mahoney, Jianping Zhang, Nathaniel Huber-Fliflet, Peter Gronvall, Haozhen Zhao

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Empirical Comparisons of CNN with Other Learning Algorithms for Text Classification in Legal Document Review

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Dec 19, 2019
Robert Keeling, Rishi Chhatwal, Nathaniel Huber-Fliflet, Jianping Zhang, Fusheng Wei, Haozhen Zhao, Shi Ye, Han Qin

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Evaluation of Seed Set Selection Approaches and Active Learning Strategies in Predictive Coding

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Jun 11, 2019
Christian J. Mahoney, Nathaniel Huber-Fliflet, Haozhen Zhao, Jianping Zhang, Peter Gronvall, Shi Ye

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Empirical Evaluations of Seed Set Selection Strategies for Predictive Coding

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Mar 21, 2019
Christian J. Mahoney, Nathaniel Huber-Fliflet, Katie Jensen, Haozhen Zhao, Robert Neary, Shi Ye

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