Intelligent Systems

Learning Temporally Extended Skills in Continuous Domains as Symbolic Actions for Planning

2022

Conference Paper

ev


Problems which require both long-horizon planning and continuous control capabilities pose significant challenges to existing reinforcement learning agents. In this paper we introduce a novel hierarchical reinforcement learning agent which links temporally extended skills for continuous control with a forward model in a symbolic discrete abstraction of the environment's state for planning. We term our agent SEADS for Symbolic Effect-Aware Diverse Skills. We formulate an objective and corresponding algorithm which leads to unsupervised learning of a diverse set of skills through intrinsic motivation given a known state abstraction. The skills are jointly learned with the symbolic forward model which captures the effect of skill execution in the state abstraction. After training, we can leverage the skills as symbolic actions using the forward model for long-horizon planning and subsequently execute the plan using the learned continuous-action control skills. The proposed algorithm learns skills and forward models that can be used to solve complex tasks which require both continuous control and long-horizon planning capabilities with high success rate. It compares favorably with other flat and hierarchical reinforcement learning baseline agents and is successfully demonstrated with a real robot.

Author(s): Jan Achterhold and Markus Krimmel and Joerg Stueckler
Book Title: Conference on Robot Learning (CoRL)
Year: 2022

Department(s): Embodied Vision
Bibtex Type: Conference Paper (inproceedings)
Paper Type: Conference

Eprint: arXiv:2207.05018
Institution: CoRR/arxiv
Note: accepted
State: Accepted
URL: https://arxiv.org/abs/2207.05018

Links: preprint
project website

BibTex

@inproceedings{achterhold2022_seads,
  title = {Learning Temporally Extended Skills in Continuous Domains as Symbolic Actions for Planning},
  author = {Achterhold, Jan and Krimmel, Markus and Stueckler, Joerg},
  booktitle = {Conference on Robot Learning (CoRL)},
  institution = {CoRR/arxiv},
  year = {2022},
  note = {accepted},
  doi = {},
  eprint = {arXiv:2207.05018},
  url = {https://arxiv.org/abs/2207.05018}
}