Papers
arxiv:2601.20829

Training Reasoning Models on Saturated Problems via Failure-Prefix Conditioning

Published on Jan 28
· Submitted by
Minwu Kim
on Jan 29
Authors:
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Abstract

Failure-prefix conditioning enables more effective reinforcement learning from saturated problems by focusing exploration on informative failure trajectories, maintaining token efficiency while improving robustness.

AI-generated summary

Reinforcement Learning with Verifiable Rewards (RLVR) has substantially improved the reasoning abilities of large language models (LLMs), yet training often stalls as problems become saturated. We identify the core challenge as the poor accessibility of informative failures: learning signals exist but are rarely encountered during standard rollouts. To address this, we propose failure-prefix conditioning, a simple and effective method for learning from saturated problems. Rather than starting from the original question, our approach reallocates exploration by conditioning training on prefixes derived from rare incorrect reasoning trajectories, thereby exposing the model to failure-prone states. We observe that failure-prefix conditioning yields performance gains matching those of training on medium-difficulty problems, while preserving token efficiency. Furthermore, we analyze the model's robustness, finding that our method reduces performance degradation under misleading failure prefixes, albeit with a mild trade-off in adherence to correct early reasoning. Finally, we demonstrate that an iterative approach, which refreshes failure prefixes during training, unlocks additional gains after performance plateaus. Overall, our results suggest that failure-prefix conditioning offers an effective pathway to extend RLVR training on saturated problems.

Community

TL;DR: We enable continued RL training on saturated reasoning tasks by conditioning on rare failure prefixes.

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