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Knowledge Graph-Assisted LLM Post-Training for Enhanced Legal Reasoning
by
Song, Dezhao
, Bonifazi, Guglielmo
, Schilder, Frank
, Schwarz, Jonathan Richard
in
Knowledge representation
/ Reasoning
/ Task complexity
/ Training
2026
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Do you wish to request the book?
Knowledge Graph-Assisted LLM Post-Training for Enhanced Legal Reasoning
by
Song, Dezhao
, Bonifazi, Guglielmo
, Schilder, Frank
, Schwarz, Jonathan Richard
in
Knowledge representation
/ Reasoning
/ Task complexity
/ Training
2026
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Knowledge Graph-Assisted LLM Post-Training for Enhanced Legal Reasoning
Paper
Knowledge Graph-Assisted LLM Post-Training for Enhanced Legal Reasoning
2026
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Overview
LLM post-training has primarily relied on large text corpora and human feedback, without capturing the structure of domain knowledge. This has caused models to struggle dealing with complex reasoning tasks, especially for high-stakes professional domains. In Law, reasoning requires deep understanding of the relations between various legal concepts, a key component missing in current LLM post-training. In this paper, we propose a knowledge graph (KG)-assisted approach for enhancing LLMs' reasoning capability in Legal that is generalizable to other high-stakes domains. We model key legal concepts by following the \\textbf{IRAC} (Issue, Rule, Analysis and Conclusion) framework, and construct a KG with 12K legal cases. We then produce training data using our IRAC KG, and conduct both Supervised Fine-Tuning (SFT) and Direct Preference Optimization (DPO) with three state-of-the-art (SOTA) LLMs (30B, 49B and 70B), varying architecture and base model family. Our post-trained models obtained better average performance on 4/5 diverse legal benchmarks (14 tasks) than baselines. In particular, our 70B DPO model achieved the best score on 4/6 reasoning tasks, among baselines and a 141B SOTA legal LLM, demonstrating the effectiveness of our KG for enhancing LLMs' legal reasoning capability.
Publisher
Cornell University Library, arXiv.org
Subject
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