Math-Shepherd: Verify and Reinforce LLMs Step-by-step without Human Annotations
Article Status
Published
Authors/contributors
- Wang, Peiyi (Author)
- Li, Lei (Author)
- Shao, Zhihong (Author)
- Xu, R. X. (Author)
- Dai, Damai (Author)
- Li, Yifei (Author)
- Chen, Deli (Author)
- Wu, Y. (Author)
- Sui, Zhifang (Author)
Title
Math-Shepherd: Verify and Reinforce LLMs Step-by-step without Human Annotations
Abstract
In this paper, we present an innovative process-oriented math process reward model called \textbf{Math-Shepherd}, which assigns a reward score to each step of math problem solutions. The training of Math-Shepherd is achieved using automatically constructed process-wise supervision data, breaking the bottleneck of heavy reliance on manual annotation in existing work. We explore the effectiveness of Math-Shepherd in two scenarios: 1) \textit{Verification}: Math-Shepherd is utilized for reranking multiple outputs generated by Large Language Models (LLMs); 2) \textit{Reinforcement Learning}: Math-Shepherd is employed to reinforce LLMs with step-by-step Proximal Policy Optimization (PPO). With Math-Shepherd, a series of open-source LLMs demonstrates exceptional performance. For instance, the step-by-step PPO with Math-Shepherd significantly improves the accuracy of Mistral-7B (77.9\%$\to$84.1\% on GSM8K and 28.6\%$\to$33.0\% on MATH). The accuracy can be further enhanced to 89.1\% and 43.5\% on GSM8K and MATH with the verification of Math-Shepherd, respectively. We believe that automatic process supervision holds significant potential for the future evolution of LLMs.
Repository
arXiv
Archive ID
arXiv:2312.08935
Date
2024-02-19
Accessed
24/07/2024, 14:54
Short Title
Math-Shepherd
Library Catalogue
Extra
arXiv:2312.08935 [cs]
<AI Smry>: An innovative process-oriented math process reward model called Math-Shepherd, which assigns a reward score to each step of math problem solutions, which holds significant potential for the future evolution of LLMs.
Citation
Wang, P., Li, L., Shao, Z., Xu, R. X., Dai, D., Li, Y., Chen, D., Wu, Y., & Sui, Z. (2024). Math-Shepherd: Verify and Reinforce LLMs Step-by-step without Human Annotations (arXiv:2312.08935). arXiv. https://doi.org/10.48550/arXiv.2312.08935
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