LLM-Assisted Causal Structure Disambiguation and Factor Extraction for Legal Judgment Prediction
arXiv cs.CL / 3/13/2026
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Key Points
- The paper argues that mainstream LJP methods based on PLMs rely on statistical correlations without explicit causal modeling, making them susceptible to spurious patterns and robustness issues.
- It proposes a framework that combines LLM priors with statistical causal discovery, including a coarse-to-fine extraction mechanism that uses statistical sampling and LLM reasoning to accurately identify standard legal constituent elements.
- It introduces an LLM-assisted causal structure disambiguation mechanism to resolve directional uncertainty by pruning ambiguous causal directions via a constrained prior knowledge base.
- A causal-aware judgment prediction model is built by constraining text attention intensity according to the generated causal graphs, with experiments on LEVEN, QA, and CAIL showing improved accuracy and robustness, especially for confusing charges.
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