Environment Design for Inverse Reinforcement Learning
Machine Learning
2024-05-15 v3 Artificial Intelligence
Abstract
Learning a reward function from demonstrations suffers from low sample-efficiency. Even with abundant data, current inverse reinforcement learning methods that focus on learning from a single environment can fail to handle slight changes in the environment dynamics. We tackle these challenges through adaptive environment design. In our framework, the learner repeatedly interacts with the expert, with the former selecting environments to identify the reward function as quickly as possible from the expert's demonstrations in said environments. This results in improvements in both sample-efficiency and robustness, as we show experimentally, for both exact and approximate inference.
Cite
@article{arxiv.2210.14972,
title = {Environment Design for Inverse Reinforcement Learning},
author = {Thomas Kleine Buening and Victor Villin and Christos Dimitrakakis},
journal= {arXiv preprint arXiv:2210.14972},
year = {2024}
}
Comments
to appear at ICML 2024