A unified modularity by encoding the similarity attraction feature into the null model

Xin Liu, T. Murata, Ken Wakita
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Abstract

Modularity is a widely used measure for evaluating community structure in networks. The definition of modularity involves a comparison between the observed network and a null model, which serves as a reference. To make the comparison significant, this null model should characterize some features of the observed network. However, the previously used null models are not good representations of real-world networks. A common feature of many real-world networks is similarity attraction, i.e., nodes that are similar have a higher chance of getting connected. We propose a new null model that captures this feature. Based on our null model, we create a unified measure Dist-Modularity, which incorporates the famous Newman-Girvan modularity as a special case. We use three examples to demonstrate that Dist-Modularity is useful in detecting 1) the multi-resolution communities and 2) the geographically dispersed communities.
通过将相似吸引特征编码到零模型中实现统一的模块化
模块化是一种广泛应用于评价网络社区结构的方法。模块化的定义包括将观察到的网络与作为参考的空模型进行比较。为了使比较有意义,这个零模型应该表征观察到的网络的一些特征。然而,以前使用的零模型并不能很好地表示现实世界的网络。许多现实世界网络的一个共同特征是相似吸引,即相似的节点有更高的连接机会。我们提出了一个新的零模型来捕捉这个特征。基于我们的零模型,我们创建了一个统一的测度分布式模块化,它将著名的纽曼-格文模块化作为一个特例。我们用三个例子证明了分布式模块化在检测1)多分辨率群落和2)地理分散群落方面是有用的。
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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