Scaling up Decentralized MDPs Through Heuristic Search
Abstract
Decentralized partially observable Markov decision processes (Dec-POMDPs) are rich models for cooperative decision-making under uncertainty, but are often intractable to solve optimally (NEXP-complete). The transition and observation independent Dec-MDP is a general subclass that has been shown to have complexity in NP, but optimal algorithms for this subclass are still inefficient in practice. In this paper, we first provide an updated proof that an optimal policy does not depend on the histories of the agents, but only the local observations. We then present a new algorithm based on heuristic search that is able to expand search nodes by using constraint optimization. We show experimental results comparing our approach with the state-of-the-art Dec-MDP and Dec-POMDP solvers. These results show a reduction in computation time and an increase in scalability by multiple orders of magnitude in a number of benchmarks.
Cite
Text
Dibangoye et al. "Scaling up Decentralized MDPs Through Heuristic Search." Conference on Uncertainty in Artificial Intelligence, 2012.Markdown
[Dibangoye et al. "Scaling up Decentralized MDPs Through Heuristic Search." Conference on Uncertainty in Artificial Intelligence, 2012.](https://mlanthology.org/uai/2012/dibangoye2012uai-scaling/)BibTeX
@inproceedings{dibangoye2012uai-scaling,
title = {{Scaling up Decentralized MDPs Through Heuristic Search}},
author = {Dibangoye, Jilles Steeve and Amato, Christopher and Doniec, Arnaud},
booktitle = {Conference on Uncertainty in Artificial Intelligence},
year = {2012},
pages = {217-226},
url = {https://mlanthology.org/uai/2012/dibangoye2012uai-scaling/}
}