Full-Step-DPO: Self-Supervised Preference Optimization with Step-wise Rewards for Mathematical Reasoning (2502.14356v1)
Abstract: Direct Preference Optimization (DPO) often struggles with long-chain mathematical reasoning. Existing approaches, such as Step-DPO, typically improve this by focusing on the first erroneous step in the reasoning chain. However, they overlook all other steps and rely heavily on humans or GPT-4 to identify erroneous steps. To address these issues, we propose Full-Step-DPO, a novel DPO framework tailored for mathematical reasoning. Instead of optimizing only the first erroneous step, it leverages step-wise rewards from the entire reasoning chain. This is achieved by training a self-supervised process reward model, which automatically scores each step, providing rewards while avoiding reliance on external signals. Furthermore, we introduce a novel step-wise DPO loss, which dynamically updates gradients based on these step-wise rewards. This endows stronger reasoning capabilities to LLMs. Extensive evaluations on both in-domain and out-of-domain mathematical reasoning benchmarks across various base LLMs, demonstrate that Full-Step-DPO achieves superior performance compared to state-of-the-art baselines.
- Huimin Xu (15 papers)
- Xin Mao (48 papers)
- Feng-Lin Li (16 papers)
- Xiaobao Wu (43 papers)
- Wang Chen (36 papers)
- Wei Zhang (1489 papers)
- Anh Tuan Luu (69 papers)