A divide-link algorithm based on fuzzy similarity for clustering networks

D. Gómez, J. Montero, J. Yáñez
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引用次数: 5

Abstract

In this paper we present an efficient hierarchical clustering algorithm for relational data, being those relations modeled by a graph. The hierarchical clustering approach proposed in this paper is based on divisive and link criteria, to break the graph and join the nodes at different stages. We then apply this approach to a community detection problems based on the well-known edge line betweenness measure as the divisive criterium and a fuzzy similarity relation as the link criterium. We present also some computational results in some well-known examples like the Karate Zachary club-network, the Dolphins network, Les Miserables network and the Authors centrality network, comparing these results to some standard methodologies for hierarchical clustering problem, both for binary and valued graphs.
基于模糊相似度的分链聚类算法
本文提出了一种高效的关系数据的层次聚类算法,即用图来建模的关系数据。本文提出的分层聚类方法是基于分裂准则和链接准则,对图进行分解,并将不同阶段的节点连接起来。然后,我们将该方法应用于基于众所周知的边缘线之间度量作为分裂准则和模糊相似关系作为链接准则的社区检测问题。我们还在一些著名的例子中给出了一些计算结果,如空手道Zachary俱乐部网络、海豚网络、悲惨世界网络和作者中心性网络,并将这些结果与二元图和值图的层次聚类问题的一些标准方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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