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Centrality in modular networks

机译:模块化网络中的中心性

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Identifying influential nodes in a network is a fundamental issue due to its wide applications, such as accelerating information diffusion or halting virus spreading. Many measures based on the network topology have emerged over the years to identify influential nodes such as Betweenness, Closeness, and Eigenvalue centrality. However, although most real-world networks are made of groups of tightly connected nodes which are sparsely connected with the rest of the network in a so-called modular structure, few measures exploit this property. Recent works have shown that it has a significant effect on the dynamics of networks. In a modular network, a node has two types of influence: a local influence (on the nodes of its community) through its intra-community links and a global influence (on the nodes in other communities) through its inter-community links. Depending on the strength of the community structure, these two components are more or less influential. Based on this idea, we propose to extend all the standard centrality measures defined for networks with no community structure to modular networks. The so-called “Modular centrality” is a two-dimensional vector. Its first component quantifies the local influence of a node in its community while the second component quantifies its global influence on the other communities of the network. In order to illustrate the effectiveness of the Modular centrality extensions, comparison with their scalar counterparts is performed in an epidemic process setting. Simulation results using the Susceptible-Infected-Recovered (SIR) model on synthetic networks with controlled community structure allows getting a clear idea about the relation between the strength of the community structure and the major type of influence (global/local). Furthermore, experiments on real-world networks demonstrate the merit of this approach.
机译:由于其广泛的应用,识别网络中的有影响性节点是一个基本问题,例如加速信息扩散或停留病毒扩散。多年来已经出现了基于网络拓扑的许多措施,以确定有影响力的节点,如之间,亲密和特征值中心。然而,尽管大多数现实世界网络由一组紧密连接的节点制成,但是在所谓的模块化结构中稀疏地与网络的其余部分连接,但很少有测量利用此属性。最近的作品表明它对网络的动态产生了重大影响。在模块化网络中,节点具有两种类型的影响:通过其社区内部的链路和全球影响(在其他社区中的节点上)的本地影响(在其社区节点上)。根据社区结构的强度,这两种组件或多或少有影响力。基于这个想法,我们建议扩展为没有社区结构的网络定义的所有标准中心措施到模块化网络。所谓的“模块化中心”是二维向量。其第一组件量化了节点在其社区中的局部影响,而第二个组件量化其全局对网络的其他社区的影响。为了说明模块化中心延伸的有效性,与其标量对应物的比较在流行过程设置中执行。使用受控社区结构的综合网络易受感染的(SIR)模型的仿真结果允许清楚地了解社区结构的强度与主要影响(全球/本地)之间的关系。此外,对现实网络的实验表明了这种方法的优点。

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