Publication | Open Access
Tactics of Adversarial Attack on Deep Reinforcement Learning Agents
289
Citations
11
References
2017
Year
Unknown Venue
Artificial IntelligenceEnchanting AttackReward HackingEngineeringMachine LearningAdversarial AttackDeep Reinforcement LearningStrategically-timed AttackAdversarial Machine LearningGenerative ModelsReinforcement Learning (Educational Psychology)Computer ScienceRobot LearningMulti-agent LearningDeep LearningOpponent ModellingPrevent Detection
We introduce two tactics, namely the strategically-timed attack and the enchanting attack, to attack reinforcement learning agents trained by deep reinforcement learning algorithms using adversarial examples. In the strategically-timed attack, the adversary aims at minimizing the agent's reward by only attacking the agent at a small subset of time steps in an episode. Limiting the attack activity to this subset helps prevent detection of the attack by the agent. We propose a novel method to determine when an adversarial example should be crafted and applied. In the enchanting attack, the adversary aims at luring the agent to a designated target state. This is achieved by combining a generative model and a planning algorithm: while the generative model predicts the future states, the planning algorithm generates a preferred sequence of actions for luring the agent. A sequence of adversarial examples is then crafted to lure the agent to take the preferred sequence of actions. We apply the proposed tactics to the agents trained by the state-of-the-art deep reinforcement learning algorithm including DQN and A3C. In 5 Atari games, our strategically-timed attack reduces as much reward as the uniform attack (i.e., attacking at every time step) does by attacking the agent 4 times less often. Our enchanting attack lures the agent toward designated target states with a more than 70% success rate. Example videos are available at http://yclin.me/adversarial_attack_RL/.
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