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Analysis of Legal Documents via Non-negative Matrix Factorization Methods

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arxiv 2104.14028 v2 pith:4ZXSPF7V submitted 2021-04-28 cs.LG cs.CY

Analysis of Legal Documents via Non-negative Matrix Factorization Methods

classification cs.LG cs.CY
keywords casefilesfactorizationmatrixnon-negativeofficialsresultstype
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The California Innocence Project (CIP), a clinical law school program aiming to free wrongfully convicted prisoners, evaluates thousands of mails containing new requests for assistance and corresponding case files. Processing and interpreting this large amount of information presents a significant challenge for CIP officials, which can be successfully aided by topic modeling techniques.In this paper, we apply Non-negative Matrix Factorization (NMF) method and implement various offshoots of it to the important and previously unstudied data set compiled by CIP. We identify underlying topics of existing case files and classify request files by crime type and case status (decision type). The results uncover the semantic structure of current case files and can provide CIP officials with a general understanding of newly received case files before further examinations. We also provide an exposition of popular variants of NMF with their experimental results and discuss the benefits and drawbacks of each variant through the real-world application.

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