动态网络中节点重要性的时间演化

Clémence Magnien, Fabien Tarissan
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引用次数: 24

摘要

长期以来,研究人员一直致力于定义不同的指标,以表征网络中节点的重要性。其中,中心性度量已被证明是相关的,因为它们将结构中节点的位置与其有效传播信息的能力联系起来。动态网络的情况下,节点和链接随着时间的推移出现和消失,导致社区提出了这些经典措施的扩展。然而,他们没有调查这样一个事实,即网络结构在进化,节点的重要性也可能随之进化。在本文中,我们提出了中心性概念的时间扩展,它考虑了在任何给定时间存在的路径,以研究动态网络中节点重要性的时间演化。我们将此应用于两个数据集,并表明节点的重要性确实随时间变化很大。我们还表明,在某些情况下,试图识别随时间推移始终重要的节点可能毫无意义,从而加强了中心性测量的时间扩展的兴趣。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time evolution of the importance of nodes in dynamic networks
For a long time now, researchers have worked on defining different metrics able to characterize the importance of nodes in networks. Among them, centrality measures have proved to be pertinent as they relate the position of a node in the structure to its ability to diffuse an information efficiently. The case of dynamic networks, in which nodes and links appear and disappear over time, led the community to propose extensions of those classical measures. Yet, they do not investigate the fact that the network structure evolves and that node importance may evolve accordingly. In the present paper, we propose temporal extensions of notions of centrality, which take into account the paths existing at any given time, in order to study the time evolution of nodes' importance in dynamic networks. We apply this to two datasets and show that the importance of nodes does indeed vary greatly with time. We also show that in some cases it might be meaningless to try to identify nodes that are consistently important over time, thus strengthening the interest of temporal extensions of centrality measures.
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