Structural Dilemmas and Developmental Pathways of Legal Argument Mining in the Era of Artificial Intelligence
arXiv cs.CL / 5/5/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The paper positions legal argument mining as a growing field that connects legal texts with intelligent analysis, with both theoretical and practical importance as AI advances.
- It reviews how prior work has developed along three main axes—data (raw texts and annotated corpora), technology (moving from rule-based and classical ML to LLMs), and theory (argumentation theory and legal dogmatics).
- Despite progress, the study argues that development is slow because researchers lack a structured representation that balances theoretical expressiveness with computational feasibility.
- It identifies specific bottlenecks, including dilemmas in data standardization, difficulties in modeling argument structures effectively, and constraints in domain adaptation.
- The paper proposes future research directions to reframe core problems and outline a development pathway, while deferring concrete model designs and implementation strategies to later work.
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