LGCLOct 21, 2025

Retaining by Doing: The Role of On-Policy Data in Mitigating Forgetting

Princeton
arXiv:2510.18874v153 citationsh-index: 11
Originality Incremental advance
AI Analysis

This addresses the problem of catastrophic forgetting in language model adaptation, offering practical guidelines for mitigating it, though it is incremental as it builds on existing methods.

The paper systematically compares supervised fine-tuning (SFT) and reinforcement learning (RL) for post-training language models, finding that RL leads to less catastrophic forgetting than SFT while achieving comparable or higher target task performance, with consistent trends across models and tasks.

Adapting language models (LMs) to new tasks via post-training carries the risk of degrading existing capabilities -- a phenomenon classically known as catastrophic forgetting. In this paper, toward identifying guidelines for mitigating this phenomenon, we systematically compare the forgetting patterns of two widely adopted post-training methods: supervised fine-tuning (SFT) and reinforcement learning (RL). Our experiments reveal a consistent trend across LM families (Llama, Qwen) and tasks (instruction following, general knowledge, and arithmetic reasoning): RL leads to less forgetting than SFT while achieving comparable or higher target task performance. To investigate the cause for this difference, we consider a simplified setting in which the LM is modeled as a mixture of two distributions, one corresponding to prior knowledge and the other to the target task. We identify that the mode-seeking nature of RL, which stems from its use of on-policy data, enables keeping prior knowledge intact when learning the target task. We then verify this insight by demonstrating that the use on-policy data underlies the robustness of RL to forgetting in practical settings, as opposed to other algorithmic choices such as the KL regularization or advantage estimation. Lastly, as a practical implication, our results highlight the potential of mitigating forgetting using approximately on-policy data, which can be substantially more efficient to obtain than fully on-policy data.

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