Explainable Text Classification in Legal Document Review A Case Study of Explainable Predictive Coding
Rishi Chhatwal, Peter Gronvall, Nathaniel Huber-Fliflet, Robert, Keeling, Jianping Zhang, Haozhen Zhao

TL;DR
This paper explores explainable AI techniques for legal document review, proposing methods to identify responsive snippets within documents to improve review efficiency and transparency.
Contribution
It introduces the concept of explainable predictive coding and presents simple methods for locating responsive snippets, supported by preliminary experimental results.
Findings
Explainable predictive coding can improve legal document review efficiency.
Proposed methods enable human-understandable identification of responsive snippets.
Preliminary experiments show promising results on real legal data.
Abstract
In today's legal environment, lawsuits and regulatory investigations require companies to embark upon increasingly intensive data-focused engagements to identify, collect and analyze large quantities of data. When documents are staged for review the process can require companies to dedicate an extraordinary level of resources, both with respect to human resources, but also with respect to the use of technology-based techniques to intelligently sift through data. For several years, attorneys have been using a variety of tools to conduct this exercise, and most recently, they are accepting the use of machine learning techniques like text classification to efficiently cull massive volumes of data to identify responsive documents for use in these matters. In recent years, a group of AI and Machine Learning researchers have been actively researching Explainable AI. In an explainable AI…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
