journal article Oct 07, 2014

Distributed Heuristic Forward Search for Multi-agent Planning

View at Publisher Save 10.1613/jair.4295
Abstract
This paper deals with the problem of classical planning for multiple cooperative agents who have private information about their local state and capabilities they do not want to reveal. Two main approaches have recently been proposed to solve this type of problem -- one is based on reduction to distributed constraint satisfaction, and the other on partial-order planning techniques. In classical single-agent planning, constraint-based and partial-order planning techniques are currently dominated by heuristic forward search. The question arises whether it is possible to formulate a distributed heuristic forward search algorithm for privacy-preserving classical multi-agent planning. Our work provides a positive answer to this question in the form of a general approach to distributed state-space search in which each agent performs only the part of the state expansion relevant to it. The resulting algorithms are simple and efficient -- outperforming previous algorithms by orders of magnitude -- while offering similar flexibility to that of forward-search algorithms for single-agent planning. Furthermore, one particular variant of our general approach yields a distributed version of the A* algorithm that is the first cost-optimal distributed algorithm for privacy-preserving planning.
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Cited By
39
Star-topology decoupled state space search

Daniel Gnad, Jörg Hoffmann · 2018

Artificial Intelligence
Metrics
39
Citations
0
References
Details
Published
Oct 07, 2014
Vol/Issue
51
Pages
293-332
Cite This Article
R. Nissim, R. Brafman (2014). Distributed Heuristic Forward Search for Multi-agent Planning. Journal of Artificial Intelligence Research, 51, 293-332. https://doi.org/10.1613/jair.4295
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