Differentially Private Exploration in Reinforcement Learning with Linear Representation
Abstract
This paper studies privacy-preserving exploration in Markov Decision Processes (MDPs) with linear representation. We first consider the setting of linear-mixture MDPs (Ayoub et al., 2020) (a.k.a.\ model-based setting) and provide an unified framework for analyzing joint and local differential private (DP) exploration. Through this framework, we prove a O(K3/4/ε) regret bound for (ε,δ)-local DP exploration and a O(K/ε) regret bound for (ε,δ)-joint DP. We further study privacy-preserving exploration in linear MDPs (Jin et al., 2020) (a.k.a.\ model-free setting) where we provide a O(K35/ε25) regret bound for (ε,δ)-joint DP, with a novel algorithm based on low-switching. Finally, we provide insights into the issues of designing local DP algorithms in this model-free setting.
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