Feb. 5, 2024, 3:44 p.m. | Shuze Liu Shangtong Zhang

cs.LG updates on arXiv.org arxiv.org

Most reinforcement learning practitioners evaluate their policies with online Monte Carlo estimators for either hyperparameter tuning or testing different algorithmic design choices, where the policy is repeatedly executed in the environment to get the average outcome. Such massive interactions with the environment are prohibitive in many scenarios. In this paper, we propose novel methods that improve the data efficiency of online Monte Carlo estimators while maintaining their unbiasedness. We first propose a tailored closed-form behavior policy that provably reduces the …

cs.lg data design environment evaluation hyperparameter interactions massive novel offline paper policy reinforcement reinforcement learning testing the environment

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