As an essential operation of legal retrieval, legal case matching plays a central role in intelligent legal systems. This task has a high demand on the explainability of matching results because of its critical impacts on downstream applications -- the matched legal cases may provide supportive evidence for the judgments of target cases and thus influence the fairness and justice of legal decisions. Focusing on this challenging task, we propose a novel and explainable method, namely \textit{IOT-Match}, with the help of computational optimal transport, which formulates the legal case matching problem as an inverse optimal transport (IOT) problem. Different from most existing methods, which merely focus on the sentence-level semantic similarity between legal cases, our IOT-Match learns to extract rationales from paired legal cases based on both semantics and legal characteristics of their sentences. The extracted rationales are further applied to generate faithful explanations and conduct matching. Moreover, the proposed IOT-Match is robust to the alignment label insufficiency issue commonly in practical legal case matching tasks, which is suitable for both supervised and semi-supervised learning paradigms. To demonstrate the superiority of our IOT-Match method and construct a benchmark of explainable legal case matching task, we not only extend the well-known Challenge of AI in Law (CAIL) dataset but also build a new Explainable Legal cAse Matching (ELAM) dataset, which contains lots of legal cases with detailed and explainable annotations. Experiments on these two datasets show that our IOT-Match outperforms state-of-the-art methods consistently on matching prediction, rationale extraction, and explanation generation.
翻译:作为法律检索的一个基本操作,法律案件匹配在智能法律体系中发挥着核心作用。这一任务对匹配结果的解释要求很高,因为它对下游应用具有关键影响,因此对匹配结果的解释要求很高 -- -- 匹配的法律案件可以为目标案件的判决提供支持性证据,从而影响法律裁决的公正和公正。我们以这一具有挑战性的任务为焦点,提出了一个创新和可解释的方法,即: textitit{IOT-Match},在计算最佳运输的帮助下,将法律案件匹配问题作为逆向最佳运输(IOT)问题。与大多数现有方法不同,这些方法仅仅侧重于判决级的语义学相似性,我们IOT-Match根据判决的语义和法律特点,从对配对的法律案件中吸取理由。我们所提取的理由进一步用于产生忠实的解释和行为匹配。此外,拟议的IOT-Match对于在实际法律案例中常见的“可调和可调适性”问题定义匹配任务,这适合于监管和半超超超度学习模式。为了展示我们所了解的“CA-IL”数据库的优越性,也只是构建了“挑战-CLIL”数据库数据库数据库数据库的构建了我们所建的逻辑数据和新数据库。