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Higher-order structure and epidemic dynamics in clustered networks

机译:集群网络中的高阶结构和流行病动态

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摘要

Clustering is typically measured by the ratio of triangles to all triples regardless of whether open or closed. Generating clustered networks, and how clustering affects dynamics on networks, is reasonably well understood for certain classes of networks (Volz et al., 2011; Karrer and Newman, 2010), e.g. networks composed of lines and non-overlapping triangles. In this paper we show that it is possible to generate networks which, despite having the same degree distribution and equal clustering, exhibit different higher-order structure, specifically, overlapping triangles and other order-four (a closed network motif composed of four nodes) structures. To distinguish and quantify these additional structural features, we develop a new network metric capable of measuring order-four structure which, when used alongside traditional network metrics, allows us to more accurately describe a network's topology. Three network generation algorithms are considered: a modified configuration model and two rewiring algorithms. By generating homogeneous networks with equal clustering we study and quantify their structural differences, and using SIS (Susceptible-Infected-Susceptible) and SIR (Susceptible-Infected-Recovered) dynamics we investigate computationally how differences in higher-order structure impact on epidemic threshold, final epidemic or prevalence levels and time evolution of epidemics. Our results suggest that characterising and measuring higher-order network structure is needed to advance our understanding of the impart of network topology on dynamics unfolding on the networks. (C) 2014 The Authors. Published by Elsevier Ltd.
机译:聚类通常通过三角形与所有三元组的比率来衡量,而不管其开口还是闭合。对于某些类型的网络(Volz等,2011; Karrer and Newman,2010),例如,生成集群网络,以及集群如何影响网络的动力学,都已被很好地理解。由线和非重叠三角形组成的网络。在本文中,我们表明,尽管网络具有相同的度数分布和相同的聚类,但仍可能生成表现出不同的高阶结构的网络,特别是重叠的三角形和其他四阶(由四个节点组成的闭合网络主题)结构。为了区分和量化这些额外的结构特征,我们开发了一种新的网络度量标准,该度量标准可以测量四阶结构,当与传统网络度量标准一起使用时,可以使我们更准确地描述网络拓扑。考虑了三种网络生成算法:修改后的配置模型和两种重新布线算法。通过生成具有均等聚类的齐次网络,我们研究并量化了它们的结构差异,并使用SIS(易感感染-易感)和SIR(易感感染-已恢复)动力学来计算地研究高阶结构的差异如何影响流行阈值,最终流行病或流行水平以及流行病的时间演变。我们的结果表明,需要表征和测量高阶网络结构,以加深我们对网络拓扑动态传递网络拓扑的理解。 (C)2014作者。由Elsevier Ltd.发布

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