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Centrality in Complex Networks with Overlapping Community Structure

机译:具有重叠社区结构的复杂网络中的中心性

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摘要

Identifying influential spreaders in networks is an essential issue in order to prevent epidemic spreading, or to accelerate information diffusion. Several centrality measures take advantage of various network topological properties to quantify the notion of influence. However, the vast majority of works ignore its community structure while it is one of the main features of many real-world networks. In a recent study, we show that the centrality of a node in a network with non-overlapping communities depends on two features: Its local influence on the nodes belonging to its community, and its global influence on the nodes belonging to the other communities. Using global and local connectivity of the nodes, we introduced a framework allowing to redefine all the classical centrality measures (designed for networks without community structure) to non-overlapping modular networks. In this paper, we extend the so-called “Modular Centrality” to networks with overlapping communities. Indeed, it is a frequent scenario in real-world networks, especially for social networks where nodes usually belong to several communities. The “Overlapping Modular Centrality” is a two-dimensional measure that quantifies the local and global influence of overlapping and non-overlapping nodes. Extensive experiments have been performed on synthetic and real-world data using the Susceptible-Infected-Recovered (SIR) epidemic model. Results show that the Overlapping Modular Centrality outperforms its alternatives designed for non-modular networks. These investigations provide better knowledge on the influence of the various parameters governing the overlapping community structure on the nodes’ centrality. Additionally, two combinations of the components of the Overlapping Modular Centrality are evaluated. Comparative analysis with competing methods shows that they produce more efficient centrality scores.
机译:为了防止流行病传播或加速信息传播,识别网络中的有影响力的传播者是必不可少的问题。几种集中度度量可利用各种网络拓扑属性来量化影响的概念。但是,绝大多数作品都忽略了其社区结构,而这却是许多现实世界网络的主要特征之一。在最近的一项研究中,我们显示了一个节点在具有不重叠社区的网络中的中心性取决于两个特征:其对属于其社区的节点的局部影响,以及对对其他社区的节点的全局影响。通过使用节点的全局和本地连接,我们引入了一个框架,该框架允许将所有经典的集中度度量(专为没有社区结构的网络设计)重新定义为不重叠的模块化网络。在本文中,我们将所谓的“模块化中心性”扩展到社区重叠的网络。确实,这在现实世界的网络中经常发生,特别是对于节点通常属于多个社区的社交网络。 “重叠模块化中心点”是一种二维度量,用于量化重叠和不重叠节点的局部和全局影响。已使用易感感染恢复(SIR)流行病模型对合成和现实数据进行了广泛的实验。结果表明,重叠模块化中心性优于其为非模块化网络设计的替代方案。这些调查为控制重叠社区结构的各种参数对节点中心性的影响提供了更好的知识。此外,对重叠模块化中心性组件的两种组合进行了评估。与竞争方法的比较分析表明,它们产生更有效的集中度得分。

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