Learning to Control in Metric Space with Optimal Regret
Author(s): Yang, Lin F.; Ni, Chengzhuo; Wang, Mengdi
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Abstract: | We study online reinforcement learning for finite-horizon deterministic control systems with arbitrary state and action spaces. Suppose the transition dynamics and reward function is unknown, but the state and action space is endowed with a metric that characterizes the proximity between different states and actions. We provide a surprisingly simple upper-confidence reinforcement learning algorithm that uses a function approximation oracle to estimate optimistic Q functions from experiences. We show that the regret of the algorithm after K episodes is o(DLK)^{\frac{d}{d+1}}H where D is the diameter of the state-action space, L is a smoothness parameter, and d is the doubling dimension of the state-action space with respect to the given metric. We also establish a near-matching regret lower bound. The proposed method can be adapted to work for more structured transition systems, including the finite-state case and the case where value functions are linear combinations of features, where the method also achieve the optimal regret. © 2019 IEEE. |
Publication Date: | 1-Sep-2019 |
Citation: | Yang, LF, Ni, C, Wang, M. (2019). Learning to Control in Metric Space with Optimal Regret. 2019 57th Annual Allerton Conference on Communication, Control, and Computing, Allerton 2019, 726 - 733. doi:10.1109/ALLERTON.2019.8919864 |
DOI: | doi:10.1109/ALLERTON.2019.8919864 |
Pages: | 726 - 733 |
Type of Material: | Journal Article |
Journal/Proceeding Title: | 57th Annual Allerton Conference on Communication, Control, and Computing, Allerton 2019 |
Version: | Author's manuscript |
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