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Leveraging Language-based Representations for Better Solving Symbol-related Problems with Large Language Models.

AuthorsYile Wang 0001 et al.
Year2025
VenueCOLING 2025
PaperView on ACL Anthology

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Abstract

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Engineering Breakdown

Plain English

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Core Technical Contribution

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How It Works

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Production Impact

Production relevance cannot be assessed without knowing what problem this paper solves and what approach it takes. A realistic production impact analysis requires understanding computational requirements, data needs, inference latency, integration points with existing NLP pipelines, and concrete performance improvements over baselines. None of this information is available in the current stub.

Limitations and When Not to Use This

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Research Context

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