Membership Inference Attacks Against Temporally Correlated Data In Deep Reinforcement Learning
2021 Β· Maziar Gomrokchi, Susan Amin, Hossein Aboutalebi, et al.
Abstract
While significant research advances have been made in the field of deep reinforcement learning, there have been no concrete adversarial attack strategies in literature tailored for studying the vulnerability of deep reinforcement learning algorithms to membership inference attacks. In such attacking systems, the adversary targets the set of collected input data on which the deep reinforcement learning algorithm has been trained. To address this gap, we propose an adversarial attack framework designed for testing the vulnerability of a state-of-the-art deep reinforcement learning algorithm to a membership inference attack. In particular, we design a series of experiments to investigate the impact of temporal correlation, which naturally exists in reinforcement learning training data, on the probability of information leakage. Moreover, we compare the performance of *collective* and *individual* membership attacks against the deep reinforcement learning algorithm. Experimental results sh
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