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f-IRL: Inverse Reinforcement Learning via State Marginal Matching

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arxiv 2011.04709 v2 pith:YAO2B6E6 submitted 2020-11-09 cs.LG cs.RO

f-IRL: Inverse Reinforcement Learning via State Marginal Matching

classification cs.LG cs.RO
keywords expertlearningrewardstatedensityf-irlfunctiongradient
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Imitation learning is well-suited for robotic tasks where it is difficult to directly program the behavior or specify a cost for optimal control. In this work, we propose a method for learning the reward function (and the corresponding policy) to match the expert state density. Our main result is the analytic gradient of any f-divergence between the agent and expert state distribution w.r.t. reward parameters. Based on the derived gradient, we present an algorithm, f-IRL, that recovers a stationary reward function from the expert density by gradient descent. We show that f-IRL can learn behaviors from a hand-designed target state density or implicitly through expert observations. Our method outperforms adversarial imitation learning methods in terms of sample efficiency and the required number of expert trajectories on IRL benchmarks. Moreover, we show that the recovered reward function can be used to quickly solve downstream tasks, and empirically demonstrate its utility on hard-to-explore tasks and for behavior transfer across changes in dynamics.

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