Neural Computing for the m-Way Graph Partitioning Problem
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概要
- 論文の詳細を見る
The graph partitioning problem is a famous combinatorial problem and has many applications including VLSI circuit design, task allocation in distributed computer systems and so on. In this paper, a novel neural network for the m-way graph partitioning problem is proposed where the maximum neuron model is used. The undirected graph with weighted nodes and weighted edges is partitioned into several subsets. The objective of partitioning is to minimize the sum of weights on cut edges with keeping the size of each subset balanced. The proposed algorithm was compared with the genetic algorithm. The experimental result shows that the proposed neural network is better or comparable with the other existing methods for solving the m-way graph partitioning problem in terms of the computation time and the solution quality.
- 社団法人電子情報通信学会の論文
- 1997-09-25
著者
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Takefuji Yoshiyasu
The Faculty Of Environmental Information Keio University
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SAITO Takayuki
the Graduate School of Media and Governance, Keio University
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Saito Takayuki
The Graduate School Of Media And Governance Keio University