Automatic Discovery of Controversial Legal Judgments by an Entropy-Based Measurement (S)

Jing Zhou, Shan Leng, Fang Wang, Hansheng Wang
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Abstract

—The judgment of controversial cases has always been an important judicial issue, but it is not easy to discover them in practice. In this paper, based on 1,361,354 legal instruments data collected from China Judgments Online, we adopt a deep learning framework to classify 147 different kinds of crimes. The proposed method has three critical steps: 1) We adopt a deep learning model to predict crime categorization; 2) With the trained model, each case is given a score vector which represents the probability that it belongs to each crime; 3) With the probability score, we develop an entropy-based index to measure the controversy of each case. We find that the larger the entropy, the more inconsistent the result given by the model based on the first instance judgment. To verify the proposed entropy measure, we provide 1) two-sided evidence based on second instance judgments; 2) comparison with some baseline models. Both confirm the practical usefulness of the entropy measure. Our results indicate that the proposed framework has an ability to discover potentially controversial cases. It should be noted that the goal of this study is not to substitute the model result for the judge’s decision, but to provide a guiding reference for the judicial practice of sentencing.
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基于熵的法律判决自动发现(S)
——争议案件的判决一直是一个重要的司法问题,但在实践中却不容易发现。本文基于中国裁判文书网收集的1361354份法律文书数据,采用深度学习框架对147种不同类型的犯罪进行分类。该方法有三个关键步骤:1)采用深度学习模型预测犯罪分类;2)使用训练好的模型,给每个案例一个分数向量,表示它属于每个犯罪的概率;3)通过概率得分,我们建立了一个基于熵的指标来衡量每个案例的争议性。我们发现,熵越大,基于初审判断的模型给出的结果越不一致。为了验证所提出的熵测度,我们提供了1)基于二审判决的双面证据;2)与一些基线模型的比较。两者都证实了熵测度的实用性。我们的结果表明,提出的框架有能力发现潜在的有争议的情况。需要注意的是,本研究的目的不是用模型结果代替法官的判决,而是为量刑的司法实践提供指导性参考。
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