JOURNAL ARTICLE

Robust Adversarial Reinforcement Learning

Lerrel PintoJames DavidsonRahul SukthankarAbhinav Gupta

Year: 2017 Journal:   arXiv (Cornell University) Pages: 2817-2826   Publisher: Cornell University

Abstract

Deep neural networks coupled with fast simulation and improved computation have led to recent successes in the field of reinforcement learning (RL). However, most current RL-based approaches fail to generalize since: (a) the gap between simulation and real world is so large that policy-learning approaches fail to transfer; (b) even if policy learning is done in real world, the data scarcity leads to failed generalization from training to test scenarios (e.g., due to different friction or object masses). Inspired from H-infinity control methods, we note that both modeling errors and differences in training and test scenarios can be viewed as extra forces/disturbances in the system. This paper proposes the idea of robust adversarial reinforcement learning (RARL), where we train an agent to operate in the presence of a destabilizing adversary that applies disturbance forces to the system. The jointly trained adversary is reinforced -- that is, it learns an optimal destabilization policy. We formulate the policy learning as a zero-sum, minimax objective function. Extensive experiments in multiple environments (InvertedPendulum, HalfCheetah, Swimmer, Hopper and Walker2d) conclusively demonstrate that our method (a) improves training stability; (b) is robust to differences in training/test conditions; and c) outperform the baseline even in the absence of the adversary.

Keywords:
Reinforcement learning Adversarial system Computer science Artificial intelligence Generalization Adversary Stability (learning theory) Minimax Machine learning Artificial neural network Mathematical optimization Mathematics Computer security

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Citation History

Topics

Adversarial Robustness in Machine Learning
Physical Sciences →  Computer Science →  Artificial Intelligence
Reinforcement Learning in Robotics
Physical Sciences →  Computer Science →  Artificial Intelligence
Anomaly Detection Techniques and Applications
Physical Sciences →  Computer Science →  Artificial Intelligence

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