Interpretable Chinese Metaphor Identification via LLM-Assisted MIPVU Rule Script Generation: A Comparative Protocol Study
arXiv cs.CL / 3/12/2026
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Key Points
- The paper presents an LLM-assisted pipeline that operationalises four metaphor identification protocols (MIP/MIPVU lexical analysis, CMDAG conceptual-mapping annotation, emotion-based detection, and simile-oriented identification) as executable, human-auditable rule scripts for Chinese metaphor identification.
- It evaluates on seven Chinese metaphor datasets across token-, sentence-, and span-level annotations, establishing the first cross-protocol comparison for Chinese metaphor identification.
- The results show Protocol A (MIP) achieves an F1 of 0.472 on token-level tasks, with cross-protocol Cohen's kappa indicating low agreement between Protocols A and D (0.001) and high agreement between Protocols B and C (0.986), highlighting protocol choice as the major source of variation.
- The study reports 100% deterministic reproducibility and interpretable outputs (rationale correctness 0.40–0.87, editability 0.80–1.00), demonstrating that rule-script architectures can be transparent while remaining competitive.
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