Logic Rules as Explanations for Legal Case Retrieval
Zhongxiang Sun, Kepu Zhang, Weijie Yu, Haoyu Wang, Jun Xu

TL;DR
This paper introduces NS-LCR, a neural-symbolic framework for legal case retrieval that uses logic rules to provide faithful, interpretable explanations and improves ranking performance on legal benchmarks.
Contribution
The paper presents a novel neuro-symbolic approach that explicitly incorporates logic rules into legal case retrieval, enhancing explainability and effectiveness.
Findings
NS-LCR improves retrieval ranking accuracy.
The framework offers faithful, logic-based explanations.
Enhanced benchmarks demonstrate its superiority.
Abstract
In this paper, we address the issue of using logic rules to explain the results from legal case retrieval. The task is critical to legal case retrieval because the users (e.g., lawyers or judges) are highly specialized and require the system to provide logical, faithful, and interpretable explanations before making legal decisions. Recently, research efforts have been made to learn explainable legal case retrieval models. However, these methods usually select rationales (key sentences) from the legal cases as explanations, failing to provide faithful and logically correct explanations. In this paper, we propose Neural-Symbolic enhanced Legal Case Retrieval (NS-LCR), a framework that explicitly conducts reasoning on the matching of legal cases through learning case-level and law-level logic rules. The learned rules are then integrated into the retrieval process in a neuro-symbolic…
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Taxonomy
TopicsArtificial Intelligence in Law · Comparative and International Law Studies · Legal Language and Interpretation
