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Risk-Sensitive Generative Adversarial Imitation Learning (1808.04468v2)

Published 13 Aug 2018 in cs.LG, cs.AI, and stat.ML

Abstract: We study risk-sensitive imitation learning where the agent's goal is to perform at least as well as the expert in terms of a risk profile. We first formulate our risk-sensitive imitation learning setting. We consider the generative adversarial approach to imitation learning (GAIL) and derive an optimization problem for our formulation, which we call it risk-sensitive GAIL (RS-GAIL). We then derive two different versions of our RS-GAIL optimization problem that aim at matching the risk profiles of the agent and the expert w.r.t. Jensen-Shannon (JS) divergence and Wasserstein distance, and develop risk-sensitive generative adversarial imitation learning algorithms based on these optimization problems. We evaluate the performance of our algorithms and compare them with GAIL and the risk-averse imitation learning (RAIL) algorithms in two MuJoCo and two OpenAI classical control tasks.

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Authors (4)
  1. Jonathan Lacotte (14 papers)
  2. Mohammad Ghavamzadeh (97 papers)
  3. Yinlam Chow (46 papers)
  4. Marco Pavone (314 papers)
Citations (23)