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Enterprise AI Analysis: LexRel: Benchmarking Legal Relation Extraction for Chinese Civil Cases

Enterprise AI Analysis

LexRel: Benchmarking Legal Relation Extraction for Chinese Civil Cases

This paper introduces LexRel, a benchmark for legal relation extraction in Chinese civil law, featuring a comprehensive schema of 265 relation types. It evaluates LLMs, showing limitations but also SFT improvements, and demonstrates the utility of legal relations for downstream legal AI tasks. The schema helps AI systems distinguish and master legal relations, which are crucial for resolving disputes and legal reasoning.

0.762 Highest Micro-F1 (Type Extraction)

Key Metrics

Our analysis of 'LexRel: Benchmarking Legal Relation Extraction for Chinese Civil Cases' reveals critical insights into the advancements and applications of AI in legal relation extraction. These key metrics highlight the scope and potential impact.

265 Relation Types
1140 Annotated Samples
9 Major Domains

Deep Analysis & Enterprise Applications

Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.

Schema Development
Benchmarking LLMs
Downstream Impact

This section details the creation of a comprehensive hierarchical taxonomy for legal relations in Chinese civil law, covering 9 major domains and 265 relation types, with precise definitions of subjects, objects, and content. It emphasizes the expert-guided refinement process that ensures conceptual rigor and real-world applicability.

The paper defines a legal relation extraction task and introduces LexRel, an expert-annotated benchmark. It evaluates state-of-the-art LLMs using zero-shot and relation-enhanced baselines, revealing significant limitations in accurately identifying civil legal relations from case facts, especially for argument extraction.

It demonstrates that incorporating legal relations information consistently enhances performance on downstream legal AI tasks like Document Proofreading, Statute Prediction, and Consultation. This highlights the practical value of explicit legal relation modeling for knowledge-intensive legal applications.

Key Insight: Fine-Grained Legal Relations

265 Fine-Grained Legal Relation Types Identified

LexRel Workflow

Draft Taxonomy Construction
Expert-Guided Refinement
Task Definition
LLM Annotation (Drafting)
Expert Annotation (Review & Refine)
LexRel Benchmark

Key Insight: LLM Performance on Legal Relation Extraction

Model Type Extraction (Micro-F1) Argument Extraction (Micro-F1)
o3-mini (zero-shot) 0.762 0.382
Qwen3-14B (RE w/ DeepSeek-R1) 0.733 0.381
GPT-4o (zero-shot) 0.670 0.224

Notes: Relation-enhanced (RE) baselines significantly improve performance for smaller models, demonstrating the value of SFT.

Key Insight: Impact on Legal AI Tasks

Integrating legal relations (w/ LR) consistently boosts performance across Document Proofreading, Statute Prediction, and Consultation tasks. For example, MiniCPM4-8B sees a significant jump in Document Proofreading from 5.70 to 11.78, indicating that structured legal knowledge helps models anchor analysis and reason more effectively over statutory knowledge.

Outcome: Improved Accuracy & Interpretability

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