This purpose of this paper is to provide an overview of the theoretical background and applications of inverse reinforcement learning (IRL).
Abstract
Purpose
This purpose of this paper is to provide an overview of the theoretical background and applications of inverse reinforcement learning (IRL).
Design/methodology/approach
Reinforcement learning (RL) techniques provide a powerful solution for sequential decision making problems under uncertainty. RL uses an agent equipped with a reward function to find a policy through interactions with a dynamic environment. However, one major assumption of existing RL algorithms is that reward function, the most succinct representation of the designer's intention, needs to be provided beforehand. In practice, the reward function can be very hard to specify and exhaustive to tune for large and complex problems, and this inspires the development of IRL, an extension of RL, which directly tackles this problem by learning the reward function through expert demonstrations. In this paper, the original IRL algorithms and its close variants, as well as their recent advances are reviewed and compared.
Findings
This paper can serve as an introduction guide of fundamental theory and developments, as well as the applications of IRL.
Originality/value
This paper surveys the theories and applications of IRL, which is the latest development of RL and has not been done so far.