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Adaptive Behavior Cloning Regularization for Stable Offline-to-Online Reinforcement Learning

Yi Zhao, Rinu Boney, Alexander Ilin, Juho Kannala, Joni Pajarinen

202216 citationsDOIOpen Access PDF

Abstract

Offline reinforcement learning, by learning from a fixed dataset, makes it possible to learn agent behaviors without interacting with the environment. However, depending on the quality of the offline dataset, such pre-trained agents may have limited performance and would further need to be fine-tuned online by interacting with the environment. During online fine-tuning, the performance of the pre-trained agent may collapse quickly due to the sudden distribution shift from offline to online data. We propose to adaptively weigh the behavior cloning loss during online fine-tuning based on the agent's performance and training stability. Moreover, we use a randomized ensemble of Q functions to further increase the sample efficiency of online fine-tuning by performing a large number of learning updates. Experiments show that the proposed method yields state-of-the-art offline-to-online reinforcement learning performance on the popular D4RL benchmark.

Topics & Concepts

Reinforcement learningComputer scienceOffline learningBenchmark (surveying)Online learningArtificial intelligenceStability (learning theory)Regularization (linguistics)Machine learningOnline and offlineCloning (programming)ReinforcementMultimediaEngineeringOperating systemGeodesyProgramming languageStructural engineeringGeographyReinforcement Learning in RoboticsData Stream Mining TechniquesAdaptive Dynamic Programming Control
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