AICLAug 3, 2025

Uncertainty-Based Methods for Automated Process Reward Data Construction and Output Aggregation in Mathematical Reasoning

arXiv:2508.01773v13 citationsh-index: 16Has Code
Originality Incremental advance
AI Analysis

This work addresses the labor-intensive and inefficient data construction for PRMs in mathematical reasoning, offering incremental improvements through automated methods and enhanced aggregation techniques.

The paper tackles the problem of constructing high-quality process reward data for training Process-level Reward Models (PRMs) in mathematical reasoning, proposing an uncertainty-driven automated framework and two uncertainty-aware output aggregation methods, which improve reasoning abilities across benchmarks like ProcessBench, MATH, and GSMPlus with demonstrated effectiveness and efficiency.

Large language models have demonstrated remarkable capabilities in complex mathematical reasoning tasks, but they inevitably generate errors throughout multi-step solutions. Process-level Reward Models (PRMs) have shown great promise by providing supervision and evaluation at each intermediate step, thereby effectively improving the models' reasoning abilities. However, training effective PRMs requires high-quality process reward data, yet existing methods for constructing such data are often labour-intensive or inefficient. In this paper, we propose an uncertainty-driven framework for automated process reward data construction, encompassing both data generation and annotation processes for PRMs. Additionally, we identify the limitations of both majority vote and PRMs, and introduce two generic uncertainty-aware output aggregation methods: Hybrid Majority Reward Vote and Weighted Reward Frequency Vote, which combine the strengths of majority vote with PRMs. Extensive experiments on ProcessBench, MATH, and GSMPlus show the effectiveness and efficiency of the proposed PRM data construction framework, and demonstrate that the two output aggregation methods further improve the mathematical reasoning abilities across diverse PRMs. The code and data will be publicly available at https://github.com/Jiuzhouh/UnPRM.

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