cs.AI updates on arXiv.org 10月27日 14:18
强化学习提升大规模模型推理性能
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本文提出一种结合强化学习(RL)的框架,以提高大规模语言模型在数学推理上的性能。通过在1.5K训练样本上应用SFT+RL模型,在GSM8K数据集上实现了超过40%的token效率提升,同时保持了高准确率。

arXiv:2510.21398v1 Announce Type: new Abstract: Test-time scaling methods have seen a rapid increase in popularity for its computational efficiency and parameter-independent training to improve reasoning performance on Large Language Models. One such method is called budget forcing, a decoding intervention strategy which allocates extra compute budget for thinking and elicits the inherent self-correcting behavior of the model. However, this relies on supervised fine-tuning (SFT) on long-context reasoning traces which causes performance degradation on smaller models due to verbose responses. For this reason, we offer a framework integrating reinforcement learning (RL) to improve token efficiency and boost the performance of a 1.5B model for mathematical reasoning. We demonstrate this using only 1.5K training samples and found that our SFT+RL model performed better on the GSM8K dataset with varying compute budgets. Our main findings showed an overall higher accuracy while significantly reducing its token usage by over 40% compared to the SFT model, revealing how RL can recover the losses due to long-context training and altogether improving performance in mathematical reasoning.

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强化学习 大规模语言模型 数学推理 性能提升 token效率
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