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Fine-tuning Large Language Models for Improving Factuality in Legal Question Answering

LegalHalBench benchmark and HIPO method improve accuracy and reduce hallucinations in legal question answering by LLMs.

Year
2025
Venue
arXiv 2025
Authors
5
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arxiv.org/abs/2501.06521ARXIV-DEFAULT
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Abstract

Hallucination, or the generation of incorrect or fabricated information, remains a critical challenge in large language models (LLMs), particularly in high-stake domains such as legal question answering (QA). In order to mitigate the hallucination rate in legal QA, we first introduce a benchmark called LegalHalBench and three automatic metrics to evaluate the common hallucinations when LLMs answer legal questions. We then propose a hallucination mitigation method that integrates behavior cloning and a novel Hard Sample-aware Iterative Direct Preference Optimization (HIPO). We conduct extensive real-data experiments to validate the effectiveness of our approach. Our results demonstrate remarkable improvements in various metrics, including the newly proposed Non-Hallucinated Statute Rate, Statute Relevance Rate, Legal Claim Truthfulness, as well as traditional metrics such as METEOR, BERTScore, ROUGE-L, and win rates.

Authors

5