基于后分析的聚类极大地改进了fiduccia - matthews算法

Y. Saab
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引用次数: 9

摘要

本文描述了一种新的分区算法BISECT,它是对fiduccia - matthews (FM)算法的扩展,递归地结合了聚类和迭代改进。对一次移动序列的后分析生成用于聚类的不相交的节点子集。聚类后,在压缩电路上再次应用BISECT。BISECT更稳定,其结果可达FM的73倍,并且在适当的温和假设下线性运行。与Kernighan-Lin算法和模拟退火算法相比,BISECT算法也表现良好。实验结果表明,BISECT是稳定的,对初始划分不太敏感。对于许多随机稀疏图,BISECT实现了0切等分(平衡分区)
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Post-analysis-based clustering dramatically improves the Fiduccia-Mattheyses algorithm
This paper describes a new partitioning algorithm, BISECT, which is an extension of the Fiduccia-Mattheyses (FM) algorithm that recursively combines clustering and iterative improvement. A post analysis of sequences of moves in one pass generates disjoint subsets of nodes for clustering. After clustering BISECT is applied again on the compacted circuit. BISECT is stabler, achieves results that can be up to 73 times better than FM, and runs in linear time under suitably mild assumptions. BISECT also performs well in comparison with the Kernighan-Lin algorithm and simulated annealing. The empirical results show that BISECT is stable and is not very sensitive to the initial partition. For many random sparse graphs, BISECT achieves 0-cut bisections (balanced partitions).<>
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