cs.AI updates on arXiv.org 07月24日 13:31
An Efficient and Precise Training Data Construction Framework for Process-supervised Reward Model in Mathematical Reasoning
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本文介绍EpicPRM框架,通过定量标注中间推理步骤,并采用自适应二分搜索算法提高标注精度和效率,有效构建高质量过程监督训练数据Epic50k,显著提升大型语言模型数学推理能力。

arXiv:2503.02382v2 Announce Type: replace-cross Abstract: Enhancing the mathematical reasoning capabilities of Large Language Models (LLMs) is of great scientific and practical significance. Researchers typically employ process-supervised reward models (PRMs) to guide the reasoning process, effectively improving the models' reasoning abilities. However, existing methods for constructing process supervision training data, such as manual annotation and per-step Monte Carlo estimation, are often costly or suffer from poor quality. To address these challenges, this paper introduces a framework called EpicPRM, which annotates each intermediate reasoning step based on its quantified contribution and uses an adaptive binary search algorithm to enhance both annotation precision and efficiency. Using this approach, we efficiently construct a high-quality process supervision training dataset named Epic50k, consisting of 50k annotated intermediate steps. Compared to other publicly available datasets, the PRM trained on Epic50k demonstrates significantly superior performance. Getting Epic50k at https://github.com/xiaolizh1/EpicPRM.

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EpicPRM框架 大型语言模型 数学推理能力 过程监督训练数据 自适应二分搜索算法
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