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Variability analysis of complex networks measures based on stochastic distances

机译:基于随机距离的复杂网络测度的变异性分析

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Complex networks can model the structure and dynamics of different types of systems. It has been shown that they are characterized by a set of measures. In this work, we evaluate the variability of complex network measures face to perturbations and, for this purpose, we impose controlled perturbations and quantify their effect. We analyze theoretical models (random, small-world and scale-free) and real networks (a collaboration network and a metabolic networks) along with the shortest path length, vertex degree, local cluster coefficient and betweenness centrality measures. In such an analysis, we propose the use of three stochastic quantifiers: the Kullback– Leibler divergence and the Jensen–Shannon and Hellinger distances. The sensitivity of these measures was analyzed with respect to the following perturbations: edge addition, edge removal, edge rewiring and node removal, all of them applied at different intensities. The results reveal that the evaluated measures are influenced by these perturbations. Additionally, hypotheses tests were performed to verify the behavior of the degree distribution to identify the intensity of the perturbations that leads to break this property.
机译:复杂的网络可以为不同类型的系统的结构和动力学建模。已经表明,它们具有一系列措施的特征。在这项工作中,我们评估了面对扰动的复杂网络测度的可变性,为此,我们施加了受控扰动并量化了其影响。我们分析理论模型(随机,小世界和无尺度)和真实网络(协作网络和新陈代谢网络),以及最短路径长度,顶点度,局部簇系数和中间度度量。在这种分析中,我们建议使用三个随机量词:Kullback-Leibler发散和Jensen-Shannon和Hellinger距离。针对以下扰动分析了这些措施的敏感性:边缘增加,边缘去除,边缘重新布线和节点去除,所有这些都以不同的强度应用。结果表明,评估的措施受这些扰动的影响。此外,进行假设检验以验证度数分布的行为,以识别导致破坏此特性的扰动强度。

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