Online Robustness Training for Deep Reinforcement Learning

Fischer, Marc, Mirman, Matthew, Stalder, Steven, Vechev, Martin

arXiv.org Machine Learning 

In deep reinforcement learning (RL), adversarial attacks can trick an agent into unwanted states and disrupt training. We propose a system called Robust Student-DQN (RS-DQN), which permits online robustness training alongside Q networks, while preserving competitive performance. We show that RS-DQN can be combined with (i) state-of-the-art adversarial training and (ii) provably robust training to obtain an agent that is resilient to strong attacks during training and evaluation.

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