SPIN Unprocessed July 8, 2026 ai_technology research
Self-Review Reinforcement Learning (SRRL) with Cross-Episode Memory and Policy Distillation
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arXiv:2607.05541v1 Announce Type: new Abstract: Reinforcement Learning is commonly used to train large language models using environmental feedback. In applied settings, the environment usually provides sparse or delayed feedback. This makes it difficult for the model to pinpoint which actions in its reasoning led to success or failure. So, learning effectively from these signals is hard because the model must determine how each failure should inform meaningful behavioral corrections in subseque
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