AI RESEARCH
Regularized Offline Policy Optimization with Posterior Hybrid Bayesian Belief
arXiv CS.AI
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ArXi:2606.00680v1 Announce Type: new Offline reinforcement learning (RL) aims to optimize policies from pre-collected datasets. A bottleneck of this paradigm is managing epistemic uncertainty, which arises from limited data coverage (sample-level) and the ambiguity in identifying transition dynamics from finite data (model-level). To provide a unified quantification of these uncertainties, Bayesian RL has been proposed by treating the dynamics model as a random variable and maintaining a corresponding belief.