The cross-entropy method for policy search in decentralized POMDPs

Journal Article (2008)
Author(s)

FA Oliehoek (Universiteit van Amsterdam)

Julian Kooij (Universiteit van Amsterdam)

Nikos Vlassis (Technical University of Crete)

Affiliation
External organisation
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Publication Year
2008
Language
English
Affiliation
External organisation
Issue number
4
Volume number
32
Pages (from-to)
341-357

Abstract

Decentralized POMDPs (Dec-POMDPs) are becoming increasingly popular as models for multiagent planning under uncertainty, but solving a Dec-POMDP exactly is known to be an intractable combinatorial optimization problem. In this paper we apply the Cross-Entropy (CE) method, a recently introduced method for combinatorial optimization, to Dec-POMDPs, resulting in a randomized (sampling-based) algorithm for approximately solving Dec-POMDPs. This algorithm operates by sampling pure policies from an appropriately parametrized stochastic policy, and then evaluates these policies either exactly or approximately in order to define the next stochastic policy to sample from, and so on until convergence. Experimental results demonstrate that the CE method can search huge spaces efficiently, supporting our claim that combinatorial optimization methods can bring leverage to the approximate solution of Dec-POMDPs.

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