Control Frequency Adaptation via Action Persistence in Batch Reinforcement Learning

Alberto Maria Metelli, Flavio Mazzolini, Lorenzo Bisi, Luca Sabbioni, and Marcello Restelli

Proceedings of the 37th International Conference on Machine Learning (ICML), 2020.

Acceptance rate: 1088/4990 (21.8%)
CORE 2020: A*   GGS 2018: A++

Abstract
The choice of the control frequency of a system has a relevant impact on the ability of reinforcement learning algorithms to learn a highly performing policy. In this paper, we introduce the notion of action persistence that consists in the repetition of an action for a fixed number of decision steps, having the effect of modifying the control frequency. We start analyzing how action persistence affects the performance of the optimal policy, and then we present a novel algorithm, Persistent Fitted Q-Iteration (PFQI), that extends FQI, with the goal of learning the optimal value function at a given persistence. After having provided a theoretical study of PFQI and a heuristic approach to identify the optimal persistence, we present an experimental campaign on benchmark domains to show the advantages of action persistence and proving the effectiveness of our persistence selection method.

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 @incollection{metelli2020control,
    author = "Metelli, Alberto Maria and Mazzolini, Flavio and Bisi, Lorenzo and Sabbioni, Luca and Restelli, Marcello",
    title = "Control Frequency Adaptation via Action Persistence in Batch Reinforcement Learning",
    booktitle = "Proceedings of the 37th International Conference on Machine Learning ({ICML})",
    volume = "119",
    pages = "6862--6873",
    publisher = "{PMLR}",
    year = "2020",
    url = "http://proceedings.mlr.press/v119/metelli20a.html"
}