Multi-Level Refinement Algorithm of Weighted Hypergraph Partitioning Problem

The formal description of weighted hypergraph partitioning problem is presented. We describe the solution of the weighted hypergraph partitioning problem based on the multi-level method. We propose the multi-level discrete particle swarm optimization refinement algorithm, whose each particle’s posit...

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Main Authors: Leng Ming, Sun Ling-yu, Guo Kai-qiang
Format: Article
Language:English
Published: De Gruyter 2017-07-01
Series:Journal of Intelligent Systems
Subjects:
Online Access:https://doi.org/10.1515/jisys-2015-0058
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spelling doaj-e3fee4686efa47c5a5383ff0089a04732021-09-06T19:40:36ZengDe GruyterJournal of Intelligent Systems0334-18602191-026X2017-07-0126340742010.1515/jisys-2015-0058Multi-Level Refinement Algorithm of Weighted Hypergraph Partitioning ProblemLeng Ming0Sun Ling-yu1Guo Kai-qiang2Key Laboratory of Watershed Ecology and Geographical Environment Monitoring of NASG, Jinggangshan University, Ji’an, Jiangxi, ChinaKey Laboratory of Watershed Ecology and Geographical Environment Monitoring of NASG, Jinggangshan University, Ji’an, Jiangxi, ChinaKey Laboratory of Watershed Ecology and Geographical Environment Monitoring of NASG, Jinggangshan University, Ji’an, Jiangxi, ChinaThe formal description of weighted hypergraph partitioning problem is presented. We describe the solution of the weighted hypergraph partitioning problem based on the multi-level method. We propose the multi-level discrete particle swarm optimization refinement algorithm, whose each particle’s position in |V|-dimensional can be considered as the corresponded partitioning. During the refinement process of the uncoarsening phase, the algorithm projects successively each particle’s corresponded partitioning back to the next-level finer hypergraph, and the degree of particle’s freedom increases with the increase in solution space’s dimension. The algorithm also regards the gain of vertex as particle information for the heuristic search and successfully searches the solution space based on the intelligent behavior between individuals’ collaboration. Furthermore, the improved compressed storage format of weighted hypergraph is presented and the two-dimensional auxiliary array is designed for counting the vertices of each hypergraph in different partitions. The rapid method of calculating the vertex’s gain and the cut’s size are proposed to avoid traversing each vertex of hyperedge and reduce the algorithm’s time complexity and space complexity. Experimental results show that the algorithm not only can find the better partitioning of weighted hypergraph than the move-based method but also can improve the search capability of the refinement algorithm.https://doi.org/10.1515/jisys-2015-0058weighted hypergraphpartitioning algorithmmultilevel methodrefinement algorithm
collection DOAJ
language English
format Article
sources DOAJ
author Leng Ming
Sun Ling-yu
Guo Kai-qiang
spellingShingle Leng Ming
Sun Ling-yu
Guo Kai-qiang
Multi-Level Refinement Algorithm of Weighted Hypergraph Partitioning Problem
Journal of Intelligent Systems
weighted hypergraph
partitioning algorithm
multilevel method
refinement algorithm
author_facet Leng Ming
Sun Ling-yu
Guo Kai-qiang
author_sort Leng Ming
title Multi-Level Refinement Algorithm of Weighted Hypergraph Partitioning Problem
title_short Multi-Level Refinement Algorithm of Weighted Hypergraph Partitioning Problem
title_full Multi-Level Refinement Algorithm of Weighted Hypergraph Partitioning Problem
title_fullStr Multi-Level Refinement Algorithm of Weighted Hypergraph Partitioning Problem
title_full_unstemmed Multi-Level Refinement Algorithm of Weighted Hypergraph Partitioning Problem
title_sort multi-level refinement algorithm of weighted hypergraph partitioning problem
publisher De Gruyter
series Journal of Intelligent Systems
issn 0334-1860
2191-026X
publishDate 2017-07-01
description The formal description of weighted hypergraph partitioning problem is presented. We describe the solution of the weighted hypergraph partitioning problem based on the multi-level method. We propose the multi-level discrete particle swarm optimization refinement algorithm, whose each particle’s position in |V|-dimensional can be considered as the corresponded partitioning. During the refinement process of the uncoarsening phase, the algorithm projects successively each particle’s corresponded partitioning back to the next-level finer hypergraph, and the degree of particle’s freedom increases with the increase in solution space’s dimension. The algorithm also regards the gain of vertex as particle information for the heuristic search and successfully searches the solution space based on the intelligent behavior between individuals’ collaboration. Furthermore, the improved compressed storage format of weighted hypergraph is presented and the two-dimensional auxiliary array is designed for counting the vertices of each hypergraph in different partitions. The rapid method of calculating the vertex’s gain and the cut’s size are proposed to avoid traversing each vertex of hyperedge and reduce the algorithm’s time complexity and space complexity. Experimental results show that the algorithm not only can find the better partitioning of weighted hypergraph than the move-based method but also can improve the search capability of the refinement algorithm.
topic weighted hypergraph
partitioning algorithm
multilevel method
refinement algorithm
url https://doi.org/10.1515/jisys-2015-0058
work_keys_str_mv AT lengming multilevelrefinementalgorithmofweightedhypergraphpartitioningproblem
AT sunlingyu multilevelrefinementalgorithmofweightedhypergraphpartitioningproblem
AT guokaiqiang multilevelrefinementalgorithmofweightedhypergraphpartitioningproblem
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