Learning Robust Rewards with Adversarial Inverse Reinforcement Learning

30 Oct 2017  ·  Justin Fu, Katie Luo, Sergey Levine ·

Reinforcement learning provides a powerful and general framework for decision making and control, but its application in practice is often hindered by the need for extensive feature and reward engineering. Deep reinforcement learning methods can remove the need for explicit engineering of policy or value features, but still require a manually specified reward function. Inverse reinforcement learning holds the promise of automatic reward acquisition, but has proven exceptionally difficult to apply to large, high-dimensional problems with unknown dynamics. In this work, we propose adverserial inverse reinforcement learning (AIRL), a practical and scalable inverse reinforcement learning algorithm based on an adversarial reward learning formulation. We demonstrate that AIRL is able to recover reward functions that are robust to changes in dynamics, enabling us to learn policies even under significant variation in the environment seen during training. Our experiments show that AIRL greatly outperforms prior methods in these transfer settings.

PDF Abstract

Datasets


  Add Datasets introduced or used in this paper

Results from the Paper


Results from Other Papers


Task Dataset Model Metric Name Metric Value Rank Source Paper Compare
MuJoCo Games Ant AIRL Fu et al. (2017) Average Return 127.61 # 3

Methods


No methods listed for this paper. Add relevant methods here