Similar Case Matching (SCM) is designed to determine whether two cases are similar. The task has an essential role in the legal system, helping legal professionals to find relevant cases quickly and thus deal with them more efficiently. Existing research has focused on improving the model's performance but not on its interpretability. Therefore, this paper proposes a pipeline framework for interpretable SCM, which consists of four modules: a judicial feature sentence identification module, a case matching module, a feature sentence alignment module, and a conflict disambiguation module. Unlike existing SCM methods, our framework will identify feature sentences in a case that contain essential information, perform similar case matching based on the extracted feature sentence results, and align the feature sentences in the two cases to provide evidence for the similarity of the cases. SCM results may conflict with feature sentence alignment results, and our framework further disambiguates against this inconsistency. The experimental results show the effectiveness of our framework, and our work provides a new benchmark for interpretable SCM.
翻译:相似案例匹配 (SCM) 旨在确定两个案例是否相似。该任务在法律体系中具有重要作用,可帮助法律专业人员快速找到相关案件,从而更有效地处理它们。现有研究已经开始关注模型的性能改进,但还未探究其可解释性方面。因此,本文提出了一个可解释性 SCM 管道框架,该框架由四个模块组成:司法特征句子识别模块、案例匹配模块、特征句子对齐模块和冲突消解模块。与现有 SCM 方法不同,我们的框架将识别一个案例中包含重要信息的特征句子,根据提取的特征句子结果进行相似案例匹配,并对两个案例中的特征句子进行对齐以提供相似性证据。SCM 结果可能与特征句子对齐结果发生冲突,我们的框架进一步消解这种不一致性。实验结果表明了我们框架的有效性,这项工作为可解释的 SCM 提供了新的基准。