Title: Apprenticeship Learning using Inverse Reinforcement Learning and Gradient Methods
Authors: Gergely Neu, Csaba Szepesvari
Published: 20th June 2012 (Wednesday) @ 15:02:01
Link: http://arxiv.org/abs/1206.5264v1
Abstract
In this paper we propose a novel gradient algorithm to learn a policy from an expertâs observed behavior assuming that the expert behaves optimally with respect to some unknown reward function of a Markovian Decision Problem. The algorithmâs aim is to find a reward function such that the resulting optimal policy matches well the expertâs observed behavior. The main difficulty is that the mapping from the parameters to policies is both nonsmooth and highly redundant. Resorting to subdifferentials solves the first difficulty, while the second one is over- come by computing natural gradients. We tested the proposed method in two artificial domains and found it to be more reliable and efficient than some previous methods.