When The Decomposition Meets The Constraint Satisfaction Problem

IEEE ACCESS(2020)

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摘要
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 (k-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.
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关键词
Graphics processing units, Clustering algorithms, Complexity theory, Load management, Data mining, Search problems, Partitioning algorithms, CSP, decomposition, scalability, GPU
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