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Probability-Consistent Preference Optimization for Enhanced LLM Reasoning

Published 29 May 2025 in cs.CL | (2505.23540v1)

Abstract: Recent advances in preference optimization have demonstrated significant potential for improving mathematical reasoning capabilities in LLMs. While current approaches leverage high-quality pairwise preference data through outcome-based criteria like answer correctness or consistency, they fundamentally neglect the internal logical coherence of responses. To overcome this, we propose Probability-Consistent Preference Optimization (PCPO), a novel framework that establishes dual quantitative metrics for preference selection: (1) surface-level answer correctness and (2) intrinsic token-level probability consistency across responses. Extensive experiments show that our PCPO consistently outperforms existing outcome-only criterion approaches across a diverse range of LLMs and benchmarks. Our code is publicly available at https://github.com/YunqiaoYang/PCPO.

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