GLARE: Agentic Reasoning for Legal Judgment Prediction
Abstract
GLARE is an agentic legal reasoning framework that enhances large language models with dynamic legal knowledge acquisition to improve reasoning accuracy and interpretability in legal judgment prediction.
Legal judgment prediction (LJP) has become increasingly important in the legal field. In this paper, we identify that existing large language models (LLMs) have significant problems of insufficient reasoning due to a lack of legal knowledge. Therefore, we introduce GLARE, an agentic legal reasoning framework that dynamically acquires key legal knowledge by invoking different modules, thereby improving the breadth and depth of reasoning. Experiments conducted on the real-world dataset verify the effectiveness of our method. Furthermore, the reasoning chain generated during the analysis process can increase interpretability and provide the possibility for practical applications.
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