An Improved Spectral Clustering Algorithm for Community Discovery

Hybrid Intelligent Systems, 2009. HIS '09. Ninth International Conference(2009)

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摘要
For discovering communities in social network, an improved spectral clustering method is presented in this paper. To make full use of the network feature, the core members are used in this method for mining communities. This goal has been achieved through the Page Rank method, which is common in directed graphs, for the reason that an undirected graph can be treated as the special case of the corresponding directed one. Following that, they can be used for initialization in the spectral clustering to avoid the sensitivity to the initial centroids. Applied to four datasets, the improved method turns out to be better than the traditional spectral clustering methods, whether in time or in accuracy aspect.
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关键词
initial centroid,spectral clustering algorithm,social network mining,pattern clustering,social network,information retrieval,full use,community discovery,page rank,directed graph,accuracy aspect,spectral clustering,undirected graph,page rank method,core member,directed graphs,data mining,social networking (online),network feature,search engines,traditional spectral,improved method,hierarchical clustering,improved spectral,network theory (graphs),improved spectral clustering algorithm,clustering algorithms,kernel
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