Latency-Aware 2-Opt Monotonic Local Search for Distributed Constraint Optimization
February 21, 2025 Β· Declared Dead Β· π International Conference on Principles and Practice of Constraint Programming
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Authors
Ben Rachmut, Roie Zivan, William Yeoh
arXiv ID
2504.08737
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.DC
Citations
0
Venue
International Conference on Principles and Practice of Constraint Programming
Last Checked
4 months ago
Abstract
Researchers recently extended Distributed Constraint Optimization Problems (DCOPs) to Communication-Aware DCOPs so that they are applicable in scenarios in which messages can be arbitrarily delayed. Distributed asynchronous local search and inference algorithms designed for CA-DCOPs are less vulnerable to message latency than their counterparts for regular DCOPs. However, unlike local search algorithms for (regular) DCOPs that converge to k-opt solutions (with k > 1), that is, they converge to solutions that cannot be improved by a group of k agents), local search CA-DCOP algorithms are limited to 1-opt solutions only. In this paper, we introduce Latency-Aware Monotonic Distributed Local Search-2 (LAMDLS-2), where agents form pairs and coordinate bilateral assignment replacements. LAMDLS-2 is monotonic, converges to a 2-opt solution, and is also robust to message latency, making it suitable for CA-DCOPs. Our results indicate that LAMDLS-2 converges faster than MGM-2, a benchmark algorithm, to a similar 2-opt solution, in various message latency scenarios.
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