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A Spectrum-Based Framework for Quantifying Randomness of Social Networks

机译:基于频谱的社交网络随机性量化框架

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摘要

Social networks tend to contain some amount of randomness and some amount of nonrandomness. The amount of randomness versus nonrandomness affects the properties of a social network. In this paper, we theoretically analyze graph randomness and present a framework which provides a series of nonrandomness measures at levels of edge, node, subgraph, and the overall graph. We show that graph nonrandomness can be obtained mathematically from the spectra of the adjacency matrix of the network. We derive the upper bound and lower bound of nonrandomness value of the overall graph. We investigate whether other graph spectra (such as Laplacian and normal spectra) could also be used to derive a nonrandomness framework. Our theoretical results showed that they are unlikely, if not impossible, to have a consistent framework to evaluate randomness. We also compare our proposed nonrandomness measures with some traditional measures such as modularity. Our theoretical and empirical studies show our proposed nonrandomness measures can characterize and capture graph randomness.
机译:社交网络倾向于包含一定数量的随机性和一定数量的非随机性。随机性与非随机性的数量会影响社交网络的属性。在本文中,我们从理论上分析了图的随机性,并提出了一个框架,该框架在边缘,节点,子图和整个图的水平上提供了一系列非随机性度量。我们表明,可以从网络的邻接矩阵的光谱中以数学方式获得图非随机性。我们导出整个图的非随机值的上限和下限。我们调查其他图谱(例如拉普拉斯谱和正态谱)是否也可以用于得出非随机框架。我们的理论结果表明,即使不是不可能,他们也不大可能有一个一致的框架来评估随机性。我们还将提议的非随机性度量与一些传统度量(例如模块化)进行比较。我们的理论和经验研究表明,我们提出的非随机性度量可以表征和捕获图随机性。

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