Distributed Bayesian: A Continuous Distributed Constraint Optimization Problem Solver

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Abstract

In this paper, the novel Distributed Bayesian (D-Bay) algorithm is presented for solving multi-agent problems within the Continuous Distributed Constraint Optimization Problem (C-DCOP) framework. This framework extends the classical DCOP framework towards utility functions with continuous domains. D-Bay solves a C-DCOP by utilizing Bayesian optimization for the adaptive sampling of variables. We theoretically show that D-Bay converges to the global optimum of the C-DCOP for Lipschitz continuous utility functions. The performance of the algorithm is evaluated empirically based on the sample efficiency. The proposed algorithm is compared to state-of-the-art DCOP and C-DCOP solvers. The algorithm generates better solutions while requiring fewer samples.

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APA

Fransman, J., Sijs, J., Dol, H., Theunissen, E., & De Schutter, B. (2023). Distributed Bayesian: A Continuous Distributed Constraint Optimization Problem Solver. Journal of Artificial Intelligence Research, 76, 393–433. https://doi.org/10.1613/jair.1.14151

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