Planning with Abstract Markov Decision Processes

Autor: Nakul Gopalan, Marie DesJardins, Michael Littman, James MacGlashan, Shawn Squire, Stefanie Tellex, John Winder, Lawson Wong
Rok vydání: 2017
Zdroj: Proceedings of the International Conference on Automated Planning and Scheduling. 27:480-488
ISSN: 2334-0843
2334-0835
DOI: 10.1609/icaps.v27i1.13867
Popis: Robots acting in human-scale environments must plan under uncertainty in large state–action spaces and face constantly changing reward functions as requirements and goals change. Planning under uncertainty in large state–action spaces requires hierarchical abstraction for efficient computation. We introduce a new hierarchical planning framework called Abstract Markov Decision Processes (AMDPs) that can plan in a fraction of the time needed for complex decision making in ordinary MDPs. AMDPs provide abstract states, actions, and transition dynamics in multiple layers above a base-level “flat” MDP. AMDPs decompose problems into a series of subtasks with both local reward and local transition functions used to create policies for subtasks. The resulting hierarchical planning method is independently optimal at each level of abstraction, and is recursively optimal when the local reward and transition functions are correct. We present empirical results showing significantly improved planning speed, while maintaining solution quality, in the Taxi domain and in a mobile-manipulation robotics problem. Furthermore, our approach allows specification of a decision-making model for a mobile-manipulation problem on a Turtlebot, spanning from low-level control actions operating on continuous variables all the way up through high-level object manipulation tasks.
Databáze: OpenAIRE