EMNLP 2025

November 06, 2025

Suzhou, China

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Reasoning large language models achieve impressive test-time scaling by thinking for longer, but this performance gain comes at significant compute cost. Directly limiting test-time budget hurts overall performance, but not all problems are equally difficult. We propose thought calibration to decide dynamically when thinking can be terminated. To calibrate our decision rule, we view a language model's growing body of thoughts as a nested sequence of reasoning trees, where the goal is to identify the point at which novel reasoning plateaus. We realize this framework through lightweight probes that operate on top of the language model's hidden representations, which are informative of both the reasoning structure and overall consistency of response. Based on three reasoning language models and four datasets, thought calibration preserves model performance with up to a 60% reduction in thinking tokens on in-distribution data, and up to 20% in out-of-distribution data.

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Next from EMNLP 2025

HydraRAG: Structured Cross-Source Enhanced Large Language Model Reasoning
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HydraRAG: Structured Cross-Source Enhanced Large Language Model Reasoning

EMNLP 2025

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Qing Liu and 6 other authors

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