Imitation Learning from Observations by Minimizing Inverse Dynamics Disagreement
Abstract
This paper studies Learning from Observations (LfO) for imitation learning with access to state-only demonstrations. In contrast to Learning from Demonstration (LfD) that involves both action and state supervisions, LfO is more practical in leveraging previously inapplicable resources (e.g., videos), yet more challenging due to the incomplete expert guidance. In this paper, we investigate LfO and its difference with LfD in both theoretical and practical perspectives. We first prove that the gap between LfD and LfO actually lies in the disagreement of inverse dynamics models between the imitator and expert, if following the modeling approach of GAIL. More importantly, the upper bound of this gap is revealed by a negative causal entropy which can be minimized in a model-free way. We term our method as Inverse-Dynamics-Disagreement-Minimization (IDDM) which enhances the conventional LfO method through further bridging the gap to LfD. Considerable empirical results on challenging benchmarks indicate that our method attains consistent improvements over other LfO counterparts.
Cite
Text
Yang et al. "Imitation Learning from Observations by Minimizing Inverse Dynamics Disagreement." Neural Information Processing Systems, 2019.Markdown
[Yang et al. "Imitation Learning from Observations by Minimizing Inverse Dynamics Disagreement." Neural Information Processing Systems, 2019.](https://mlanthology.org/neurips/2019/yang2019neurips-imitation/)BibTeX
@inproceedings{yang2019neurips-imitation,
title = {{Imitation Learning from Observations by Minimizing Inverse Dynamics Disagreement}},
author = {Yang, Chao and Ma, Xiaojian and Huang, Wenbing and Sun, Fuchun and Liu, Huaping and Huang, Junzhou and Gan, Chuang},
booktitle = {Neural Information Processing Systems},
year = {2019},
pages = {239-249},
url = {https://mlanthology.org/neurips/2019/yang2019neurips-imitation/}
}