作者
Chris HQ Ding, Xiaofeng He, Hongyuan Zha, Ming Gu, Horst D Simon
发表日期
2001/11/29
研讨会论文
Proceedings 2001 IEEE international conference on data mining
页码范围
107-114
出版商
IEEE
简介
An important application of graph partitioning is data clustering using a graph model - the pairwise similarities between all data objects form a weighted graph adjacency matrix that contains all necessary information for clustering. In this paper, we propose a new algorithm for graph partitioning with an objective function that follows the min-max clustering principle. The relaxed version of the optimization of the min-max cut objective function leads to the Fiedler vector in spectral graph partitioning. Theoretical analyses of min-max cut indicate that it leads to balanced partitions, and lower bounds are derived. The min-max cut algorithm is tested on newsgroup data sets and is found to out-perform other current popular partitioning/clustering methods. The linkage-based refinements to the algorithm further improve the quality of clustering substantially. We also demonstrate that a linearized search order based on linkage …
引用总数
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学术搜索中的文章
CHQ Ding, X He, H Zha, M Gu, HD Simon - Proceedings 2001 IEEE international conference on …, 2001