SR: Teaching LLMs to Self-verify and Self-correct via Reinforcement Learning

Recent studies have demonstrated the effectiveness of LLM test-time scaling. However, existing approaches to incentivize LLMs' deep thinking abilities generally require large-scale data or significant training efforts. Meanwhile, it remains unclear how to improve the thinking abilities of less powerful base models. In this work, we introduce SR, an efficient framework that enhances LLM reasoning by teaching models to self-verify and self-correct during inference. Specifically, we first initialize LLMs with iterative self-verification and self-correction behaviors through supervised fine-tuning on carefully curated data. The self-verification and self-correction skills are then further strengthened by both outcome-level and process-level reinforcement learning, with minimized resource requirements, enabling the model to adaptively refine its reasoning process during inference. Our results demonstrate that, with only 3.1k self-verifying and self-correcting behavior initialization samples, Qwen2.5-math-7B achieves an accuracy improvement from 51.0\% to 81.6\%, outperforming models trained on an equivalent amount of long-CoT distilled data. Extensive experiments and analysis based on three base models across both in-domain and out-of-domain benchmarks validate the effectiveness of SR. Our code and data are available atthis https URL.
View on arXiv@article{ma2025_2502.12853, title={ S$^2$R: Teaching LLMs to Self-verify and Self-correct via Reinforcement Learning }, author={ Ruotian Ma and Peisong Wang and Cheng Liu and Xingyan Liu and Jiaqi Chen and Bang Zhang and Xin Zhou and Nan Du and Jia Li }, journal={arXiv preprint arXiv:2502.12853}, year={ 2025 } }