Planning with Abstract Learned Models While Learning Transferable Subtasks
Machine Learning
2020-06-15 v2 Artificial Intelligence
Robotics
Machine Learning
Abstract
We introduce an algorithm for model-based hierarchical reinforcement learning to acquire self-contained transition and reward models suitable for probabilistic planning at multiple levels of abstraction. We call this framework Planning with Abstract Learned Models (PALM). By representing subtasks symbolically using a new formal structure, the lifted abstract Markov decision process (L-AMDP), PALM learns models that are independent and modular. Through our experiments, we show how PALM integrates planning and execution, facilitating a rapid and efficient learning of abstract, hierarchical models. We also demonstrate the increased potential for learned models to be transferred to new and related tasks.
Keywords
Cite
@article{arxiv.1912.07544,
title = {Planning with Abstract Learned Models While Learning Transferable Subtasks},
author = {John Winder and Stephanie Milani and Matthew Landen and Erebus Oh and Shane Parr and Shawn Squire and Marie desJardins and Cynthia Matuszek},
journal= {arXiv preprint arXiv:1912.07544},
year = {2020}
}
Comments
Accepted at AAAI-20, 9 pages