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A comprehensive analysis of the correlation between maximal clique size and centrality metrics for complex network graphs

机译:复杂网络图中最大集团大小与中心度量的相关性综合分析

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We seek to identify one or more computationally light-weight centrality metrics that have a high correlation with that of the maximal clique size (the maximum size of the clique a node is part of) - a computationally hard measure. In this pursuit, we compute three well-known measures of evaluating the correlation between two datasets: Product-moment based Pearson's correlation coefficient, Rank-based Spearman's correlation coefficient and Concordance-based Kendall's correlation coefficient. We compute the above three correlation coefficient values between the maximal clique size and each of the four prominent node centrality metrics (degree, eigenvector, betweenness and closeness) for random network graphsand scale-free network graphs as well as for a suite of ten real-world network graphs whose degree distribution ranges from random to scale-free. We also explore the impact of the operating parameters of the theoretical models for generating random networks and scale-free networks on the correlation between maximal clique size and the centrality metrics.
机译:我们寻求识别具有高相关的一个或多个计算光重量中心度量,与最大Clique大小(Clique的最大大小为节点的一部分) - 计算硬测量。在这种追求中,我们计算了三种众所周知的评估两个数据集之间的相关性:产品时刻基于Pearson的相关系数,基于秩的Spearman的相关系数和基于一致性的Kendall的相关系数。我们在最大的Clique大小和四个突出节点中心度量(学位,特征向量,度和接近度)之间的每一个之间计算上述三个相关系数值,用于随机网络GraphsAnd尺度网络图表以及10个真实的套件世界网络图表,其学位分布范围从随机缩放到无垢。我们还探讨了理论模型的运行参数对生成随机网络和无尺度网络的影响,以最大集团大小与中心度量之间的相关性。

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