Leniency to those who confess?: Predicting the Legal Judgement via Multi-Modal Analysis

Liang Yang, Jingjie Zeng, Tao Peng, Xi Luo, Jinghui Zhang, Hongfei Lin
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引用次数: 2

Abstract

The Legal Judgement Prediction (LJP) is now under the spotlight. And it usually consists of multiple sub-tasks, such as penalty prediction (fine and imprisonment) and the prediction of articles of law. For penalty prediction, they are often closely related to the trial process, especially the attitude analysis of criminal suspects, which will influence the judgment of the presiding judge to some extent. In this paper, we firstly construct a multi-modal dataset with 517 cases of intentional assault, which contains trial information as well as the attitude of the suspect. Then, we explore the relationship between suspect`s attitude and term of imprisonment. Finally, we use the proposed multi-modal model to predict the suspect's attitude, and compare it with several strong baselines. Our experimental results show that the attitude of the criminal suspect is closely related to the penalty prediction, which provides a new perspective for LJP.
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对认罪的人从宽处理?:用多模态分析预测法律判决
法律判决预测(LJP)目前备受关注。它通常由多个子任务组成,如刑罚预测(罚款和监禁)和法律条文预测。对于刑罚预测,往往与审判过程密切相关,尤其是犯罪嫌疑人的态度分析,会在一定程度上影响审判长的判决。本文首先构建了包含517起故意伤害案的多模态数据集,该数据集包含审判信息和犯罪嫌疑人的态度。然后,我们探讨了犯罪嫌疑人态度与刑期的关系。最后,我们使用提出的多模态模型来预测嫌疑人的态度,并将其与几个强基线进行比较。我们的实验结果表明,犯罪嫌疑人的态度与刑罚预测密切相关,这为LJP提供了一个新的视角。
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