Section 01
Introduction to the DeepInsightTheorem Framework: Cultivating Insight in LLM Mathematical Reasoning
This paper proposes the DeepInsightTheorem framework, aiming to address the lack of insight in large language models (LLMs) for informal mathematical theorem proving. Through hierarchical dataset design and a progressive multi-stage supervised fine-tuning (SFT) strategy, the framework helps models identify core problem-solving techniques and plan proof structures, thereby enhancing their mathematical reasoning ability. Experiments show that this framework significantly outperforms baseline methods on multiple benchmarks including elementary mathematics, competition mathematics, and university mathematics, especially excelling in complex problems.