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Distributionally Robust Off-Dynamics Reinforcement Learning: Provable Efficiency with Linear Function Approximation

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We study off-dynamics Reinforcement Learning (RL), where the policy is trained on a source domain and deployed to a distinct target domain. We aim to solve this problem via online distributionally robust Markov decision processes (DRMDPs), where the learning algorithm actively interacts with the source domain while seeking the optimal performance under the worst possible dynamics that is within an uncertainty set of the source domain's transition kernel. We provide the first study on online DRMDPs with function approximation for off-dynamics RL. We find that DRMDPs' dual formulation can induce nonlinearity, even when the nominal transition kernel is linear, leading to error propagation. By designing a $d$-rectangular uncertainty set using the total variation distance, we remove this additional nonlinearity and bypass the error propagation. We then introduce DR-LSVI-UCB, the first provably efficient online DRMDP algorithm for off-dynamics RL with function approximation, and establish a polynomial suboptimality bound that is independent of the state and action space sizes. Our work makes the first step towards a deeper understanding of the provable efficiency of online DRMDPs with linear function approximation. Finally, we substantiate the performance and robustness of DR-LSVI-UCB through different numerical experiments.

Zhishuai Liu, Pan Xu• 2024

Related benchmarks

TaskDatasetResultRank
Offline Reinforcement LearningD4RL halfcheetah-medium-expert
Normalized Score44.4
117
Offline Reinforcement LearningD4RL hopper-medium-expert
Normalized Score20.2
115
Offline Reinforcement LearningD4RL Medium-Replay Hopper
Normalized Score40.6
72
Offline Reinforcement LearningD4RL Walker2d Medium v2
Normalized Return44.5
67
Offline Reinforcement LearningD4RL Medium-Replay HalfCheetah
Normalized Score27.8
59
Offline Reinforcement LearningD4RL Medium HalfCheetah
Normalized Score41.3
59
Offline Reinforcement LearningD4RL halfcheetah v2 (medium-replay)
Normalized Score26.3
58
Offline Reinforcement LearningD4RL Medium Walker2d
Normalized Score40.3
58
Offline Reinforcement LearningD4RL hopper-expert v2
Normalized Score94.8
56
Offline Reinforcement LearningD4RL halfcheetah-expert v2
Normalized Score84.3
56
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