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Most Influential AISTATS 2011 Paper · 2026-03 edition

Relative Entropy Inverse Reinforcement Learning

Abdeslam Boularias; Jens Kober; Jan Peters

Venue
Conference on Artificial Intelligence and Statistics (AISTATS) 2011
Recognition
Most Influential AISTATS 2011 Paper (Rank No. 7)
Edition
2026-03
Impact factor
6
Certificate ID
19846ea1c688f51d

Abstract

We consider the problem of imitation learning where the examples, demonstrated by an expert, cover only a small part of a large state space. Inverse Reinforcement Learning (IRL) provides an efficient tool for generalizing the demonstration, based on the assumption that the expert is optimally acting in a Markov Decision Process (MDP). Most of the past work on IRL requires that a (near)-optimal policy can be computed for different reward functions. However, this requirement can hardly be satisfied in systems with a large, or continuous, state space. In this paper, we propose a model-free IRL algorithm, where the relative entropy between the empirical distribution of the state-action trajectories under a baseline policy and their distribution under the learned policy is minimized by stochastic gradient descent. We compare this new approach to well-known IRL algorithms using learned MDP models. Empirical results on simulated car racing, gridworld and ball-in-a-cup problems show that our approach is able to learn good policies from a small number of demonstrations. [pdf]

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