Mechanic: Sorrifier-Driven Formal Decomposition Workflow for Automated Theorem Proving
AI 摘要
Mechanic提出了一种基于sorry驱动的分解方法,提高了自动化定理证明的效率。
主要贡献
- 提出了sorry驱动的正式分解策略
- 避免了完整重构的浪费和上下文过长的问题
- 在数学竞赛基准测试中取得了显著优势
方法论
利用Lean的sorry占位符隔离未解决的子目标,将其提取到独立的上下文中解决。
原文摘要
Recent advances in large language models (LLMs) and LLM-based agents have substantially improved the capabilities of automated theorem proving. However, for problems requiring complex mathematical reasoning, current systems rarely succeed on the first try and must repeatedly modify their proof strategies. Existing approaches for handling failed attempts typically either discard the entire proof and regenerate it from scratch or iteratively fix errors within the proof. The former is inefficient, as it may abandon mostly correct reasoning due to localized errors, while the latter, although preserving prior progress, leads to progressively longer contexts which progressively degrades the model's ability to attend to the remaining unresolved subproblems. To address this dilemma, we propose Mechanic, a novel agent system that employs a sorry-driven formal decomposition strategy. By leveraging the sorry placeholder in Lean to precisely isolate unresolved subgoals while preserving the surrounding verified proof structure, Mechanic extracts each failed subproblem into a clean, self-contained context and resolves it independently. This avoids both the waste of full regeneration and the excessive context length induced by repeated repairs. Experimental results on challenging mathematical competition benchmarks, including IMO 2025 and Putnam 2025, demonstrate that our agent achieves significant advantages in proving efficiency.