Abstract
We describe the version of the GPT planner used in the probabilistic track of the 4th International Planning Competition (IPC-4). This version, called mGPT, solves Markov Decision Processes specified in the PPDDL language by extracting and using different classes of lower bounds along with various heuristic-search algorithms. The lower bounds are extracted from deterministic relaxations where the alternative probabilistic effects of an action are mapped into different, independent, deterministic actions. The heuristic-search algorithms use these lower bounds for focusing the updates and delivering a consistent value function over all states reachable from the initial state and the greedy policy. ©2005 AI Access Foundation. All rights reserved.
Cite
CITATION STYLE
Bonet, B., & Geffner, H. (2005). MGPT: A probabilistic planner based on heuristic search. Journal of Artificial Intelligence Research, 24, 933–944. https://doi.org/10.1613/jair.1688
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