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Measuring Proximity in Attributed Networks for Community Detection

机译:测量归属网络的邻近社区检测

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Proximity measures on graphs have a variety of applications in network analysis, including community detection. Previously they have been mainly studied in the context of networks without attributes. If node attributes are taken into account, however, this can provide more insight into the network structure. In this paper, we extend the definition of some well-studied proximity measures to attributed networks. To account for attributes, several attribute similarity measures are used. Finally, the obtained proximity measures are applied to detect the community structure in some real-world networks using the spectral clustering algorithm.
机译:图中的近距离测量在网络分析中具有各种应用,包括社区检测。 以前,他们主要在没有属性的网络的背景下研究。 但是,如果要考虑节点属性,这可以提供更多地深入了解网络结构。 在本文中,我们将一些研究的近距离措施的定义扩展到归因于网络。 要考虑属性,使用了几种属性相似度措施。 最后,应用了所获得的接近度测量来使用光谱聚类算法检测一些现实网络中的社区结构。

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