LGAICLMay 20, 2025

TinyV: Reducing False Negatives in Verification Improves RL for LLM Reasoning

UW
arXiv:2505.14625v214 citationsh-index: 12Has Code
Originality Incremental advance
AI Analysis

This addresses a critical bottleneck in RL for LLM reasoning by improving reward reliability, though it is incremental as it augments existing methods.

The paper tackles the problem of false negatives in verifiers used for RL-based fine-tuning of LLMs, where verifiers incorrectly reject correct model outputs, and shows that integrating the proposed TinyV verifier boosts pass rates by up to 10% on math-reasoning benchmarks.

Reinforcement Learning (RL) has become a powerful tool for enhancing the reasoning abilities of large language models (LLMs) by optimizing their policies with reward signals. Yet, RL's success relies on the reliability of rewards, which are provided by verifiers. In this paper, we expose and analyze a widespread problem--false negatives--where verifiers wrongly reject correct model outputs. Our in-depth study of the Big-Math-RL-Verified dataset reveals that over 38% of model-generated responses suffer from false negatives, where the verifier fails to recognize correct answers. We show, both empirically and theoretically, that these false negatives severely impair RL training by depriving the model of informative gradient signals and slowing convergence. To mitigate this, we propose tinyV, a lightweight LLM-based verifier that augments existing rule-based methods, which dynamically identifies potential false negatives and recovers valid responses to produce more accurate reward estimates. Across multiple math-reasoning benchmarks, integrating TinyV boosts pass rates by up to 10% and accelerates convergence relative to the baseline. Our findings highlight the critical importance of addressing verifier false negatives and offer a practical approach to improve RL-based fine-tuning of LLMs. Our code is available at https://github.com/uw-nsl/TinyV.

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