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AAAI 2006

ODPOP: An Algorithm for Open/Distributed Constraint Optimization

Conference Paper Multiagent Systems Artificial Intelligence

Abstract

We propose ODPOP, a new distributed algorithm for open multiagent combinatorial optimization that feature unbounded domains (Faltings & Macho-Gonzalez 2005). The ODPOP algorithm explores the same search space as the dynamic programming algorithm DPOP (Petcu & Faltings 2005b) or ADOPT (Modi et al. 2005), but does so in an incremental, best-first fashion suitable for open problems. ODPOP has several advantages over DPOP. First, it uses messages whose size only grows linearly with the treewidth of the problem. Second, by letting agents explore values in a bestfirst order, it avoids incurring always the worst case complexity as DPOP, and on average it saves a significant amount of computation and information exchange. To show the merits of our approach, we report on experiments with practically sized distributed meeting scheduling problems in a multiagent system.

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Context

Venue
AAAI Conference on Artificial Intelligence
Archive span
1980-2026
Indexed papers
28718
Paper id
29847811039845912