cs.AI updates on arXiv.org 07月18日 12:14
Supervised Fine Tuning on Curated Data is Reinforcement Learning (and can be improved)
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本文提出了一种基于重要性加权的监督微调(iw-SFT)策略,通过优化强化学习目标下界,提高了在稀疏奖励设置下的性能,并在大型语言模型和连续控制任务中展现出竞争力。

arXiv:2507.12856v1 Announce Type: cross Abstract: Behavior Cloning (BC) on curated (or filtered) data is the predominant paradigm for supervised fine-tuning (SFT) of large language models; as well as for imitation learning of control policies. Here, we draw on a connection between this successful strategy and the theory and practice of finding optimal policies via Reinforcement Learning (RL). Building on existing literature, we clarify that SFT can be understood as maximizing a lower bound on the RL objective in a sparse reward setting. Giving support to its often observed good performance. From this viewpoint, we realize that a small modification to SFT leads to an importance weighted variant that behaves closer to training with RL as it: i) optimizes a tighter bound to the RL objective and, ii) can improve performance compared to SFT on curated data. We refer to this variant as importance weighted supervised fine-tuning (iw-SFT). We show that it is easy to implement and can be further generalized to training with quality scored data. The resulting SFT variants are competitive with more advanced RL algorithms for large language models and for training policies in continuous control tasks. For example achieving 66.7% on the AIME 2024 dataset.

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监督微调 重要性加权 强化学习 语言模型 控制任务
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