Recent advancements in large language models (LLMs) have sparked considerable interest in automated theorem proving and a prominent line of research integrates stepwise LLM-based provers into tree search. In this paper, we introduce a novel proof-state exploration approach for training data synthesis, designed to produce diverse tactics across a wide range of intermediate proof states, thereby facilitating effective one-shot fine-tuning of LLM as the policy model. We also propose an adaptive beam size strategy, which effectively takes advantage of our data synthesis method and achieves a trade-off between exploration and exploitation during tree search. Evaluations on the MiniF2F and ProofNet benchmarks demonstrate that our method outperforms strong baselines under the stringent Pass@1 metric, attaining an average pass rate of $60.74%$ on MiniF2F and $21.18%$ on ProofNet. These results underscore the impact of large-scale synthetic data in advancing automated theorem proving.
LLM-based Automated Theorem Proving Hinges on Scalable Synthetic Data Generation
A novel proof-state exploration approach and adaptive beam size strategy enhance LLM-based automated theorem proving through synthetic data synthesis, demonstrating superior performance on MiniF2F and ProofNet benchmarks.
- Year
- 2025
- Venue
- arXiv 2025
- Authors
- 9
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2505.12031ARXIV-DEFAULT
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