Extracting Proceedings Data from Court Cases with Machine Learning

IF 0.9 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Stats Pub Date : 2022-12-13 DOI:10.3390/stats5040079
Bruno Mathis
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Abstract

France is rolling out an open data program for all court cases, but with few metadata attached. Reusers will have to use named-entity recognition (NER) within the text body of the case to extract any value from it. Any court case may include up to 26 variables, or labels, that are related to the proceeding, regardless of the case substance. These labels are from different syntactic types: some of them are rare; others are ubiquitous. This experiment compares different algorithms, namely CRF, SpaCy, Flair and DeLFT, to extract proceedings data and uses the learning model assessment capabilities of Kairntech, an NLP platform. It shows that an NER model can apply to this large and diverse set of labels and extract data of high quality. We achieved an 87.5% F1 measure with Flair trained on more than 27,000 manual annotations. Quality may yet be improved by combining NER models by data type.
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用机器学习从法庭案件中提取诉讼数据
法国正在为所有法庭案件推出一个开放数据程序,但几乎没有附带元数据。Reusers必须在案件正文中使用命名实体识别(NER)来从中提取任何价值。任何法庭案件都可能包括多达26个与诉讼程序相关的变量或标签,无论案件内容如何。这些标签来自不同的句法类型:其中一些是罕见的;其他的则无处不在。本实验比较了不同的算法,即CRF、SpaCy、Flair和DeLFT,以提取诉讼数据,并使用了NLP平台Kairntech的学习模型评估能力。它表明,NER模型可以应用于这一庞大而多样的标签集,并提取高质量的数据。Flair对27000多个手动注释进行了训练,我们获得了87.5%的F1测量结果。还可以通过按数据类型组合NER模型来提高质量。
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CiteScore
0.60
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0.00%
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0
审稿时长
7 weeks
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