cs.AI updates on arXiv.org 07月04日 12:08
Bourbaki: Self-Generated and Goal-Conditioned MDPs for Theorem Proving
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本文提出sG-MDPs新框架,解决大型语言模型在自动定理证明中面临的挑战,通过生成和追求子目标实现更结构化的目标生成,并运用MCTS算法在PutnamBench上取得新突破。

arXiv:2507.02726v1 Announce Type: new Abstract: Reasoning remains a challenging task for large language models (LLMs), especially within the logically constrained environment of automated theorem proving (ATP), due to sparse rewards and the vast scale of proofs. These challenges are amplified in benchmarks like PutnamBench, which contains university-level problems requiring complex, multi-step reasoning. To address this, we introduce self-generated goal-conditioned MDPs (sG-MDPs), a new framework in which agents generate and pursue their subgoals based on the evolving proof state. Given this more structured generation of goals, the resulting problem becomes more amenable to search. We then apply Monte Carlo Tree Search (MCTS)-like algorithms to solve the sG-MDP, instantiating our approach in Bourbaki (7B), a modular system that can ensemble multiple 7B LLMs for subgoal generation and tactic synthesis. On PutnamBench, Bourbaki (7B) solves 26 problems, achieving new state-of-the-art results with models at this scale.

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sG-MDPs LLMs 自动定理证明 PutnamBench MCTS
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