AI RESEARCH
When Does Non-Uniform Replay Matter in Reinforcement Learning?
arXiv CS.AI
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ArXi:2605.10236v1 Announce Type: cross Modern off-policy reinforcement learning algorithms often rely on simple uniform replay sampling and it remains unclear when and why non-uniform replay improves over this strong baseline. Across diverse RL settings, we show that the effectiveness of non-uniform replay is governed by three factors: replay volume, the number of replayed transitions per environment step; expected recency, how recent sampled transitions are; and the entropy of the replay sampling distribution.