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首页> 外文期刊>Journal of statistical mechanics: Theory and Experiment >M-Centrality: identifying key nodes based on global position and local degree variation
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M-Centrality: identifying key nodes based on global position and local degree variation

机译:M-Centrality:识别基于全局位置和局部程度变化的关键节点

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摘要

Identifying influential nodes in a network is a major issue due to the great deal of applications concerned, such as disease spreading and rumor dynamics. That is why, a plethora of centrality measures has emerged over the years in order to rank nodes according to their topological importance in the network. Local metrics such as degree centrality make use of a very limited information and are easy to compute. Global metrics such as betweenness centrality exploit the information of the whole network structure at the cost of a very high computational complexity. Recent works have shown that combining multiple metrics is a promising strategy to quantify the node's influential ability. Our work is in this line. In this paper, we introduce a multi-attributes centrality measure called M-Centrality that combines the information on the position of the node in the network with the local information on its nearest neighborhood. The position is measured by the K-shell decomposition, and the degree variation in the neighborhood of the node quantifies the influence of the local context. In order to examine the performances of the proposed measure, we conduct experiments on small and large scale real-world networks from the perspectives of transmission dynamics and network connectivity. According to the empirical results, the M-Centrality outperforms its alternatives in identifying both influential spreaders and nodes essential to maintain the network connectivity. In addition, its low computational complexity makes it easily applied to large scale networks.
机译:识别网络中的有影响性节点是由于有关的大量应用,如疾病扩散和谣言动态,这是一个主要问题。这就是为什么,多年来已经出现了一流的中心措施,以根据网络在网络中的拓扑重要性等级排列节点。程度中心等本地指标利用非常有限的信息,并且易于计算。诸如之间的全球度量,中心地位,以非常高的计算复杂度的成本利用整个网络结构的信息。最近的作品表明,组合多个指标是一种有望的策略来量化节点的影响力。我们的工作是这一行。在本文中,我们介绍了一种称为M-Centernality的多属性中心度,该测量将网络中节点位置的信息与其最近的邻域的本地信息相结合。通过k-shell分解测量位置,节点的邻域中的度变化量化了本地上下文的影响。为了检查所提出的措施的表演,我们从传输动态和网络连接的角度来看小型和大规​​模现实网络的实验。根据经验结果,M-Centrality占据了识别维护网络连接所必需的有影响力的扩展器和节点时的替代方案。此外,其低计算复杂性使其很容易应用于大规模网络。

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