资源论文Trading Off Solution Quality for Faster Computation in DCOP Search Algorithms

Trading Off Solution Quality for Faster Computation in DCOP Search Algorithms

2019-11-14 | |  37 |   28 |   0

Abstract Distributed Constraint Optimization (DCOP) is a key technique for solving agent coordination problems. Because fifinding cost-minimal DCOP solutions is NP-hard, it is important to develop mechanisms for DCOP search algorithms that trade off their solution costs for smaller runtimes. However, existing tradeoff mechanisms do not provide relative error bounds. In this paper, we introduce three tradeoff mechanisms that provide such bounds, namely the Relative Error Mechanism, the Uniformly Weighted Heuristics Mechanism and the Non-Uniformly Weighted Heuristics Mechanism, for two DCOP algorithms, namely ADOPT and BnB-ADOPT. Our experimental results show that the Relative Error Mechanism generally dominates the other two tradeoff mechanisms for ADOPT and the Uniformly Weighted Heuristics Mechanism generally dominates the other two tradeoff mechanisms for BnB-ADOPT

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