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When the Decomposition Meets the Constraint Satisfaction Problem

Autor
Habbas, Zineb
Lin, Jerry Chun-Wei
Djenouri, Youcef
Djenouri, Djamel
Cano, Alberto
Michalak, Tomasz
Data publikacji
2020
Abstrakt (EN)

This paper explores the joint use of decomposition methods and parallel computing for solving constraint satisfaction problems and introduces a framework called Parallel Decomposition for Constraint Satisfaction Problems (PD-CSP). The main idea is that the set of constraints are first clustered using a decomposition algorithm in which highly correlated constraints are grouped together. Next, parallel search of variables is performed on the produced clusters in a way that is friendly for parallel computing. In particular, for the first step, we propose the adaptation of two well-known clustering algorithms ( -means and DBSCAN). For the second step, we develop a GPU-based approach to efficiently explore the clusters. The results from the extensive experimental evaluation show that the PD-CSP provides competitive results in terms of accuracy and runtime.

Dyscyplina PBN
informatyka
Czasopismo
IEEE Access
Tom
8
Strony od-do
207034-207043
ISSN
2169-3536
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