EIGENVECTOR-BASED CENTRALITY MEASURES FOR TEMPORAL NETWORKS.

IF 1.9 4区 数学 Q2 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Multiscale Modeling & Simulation Pub Date : 2017-01-01 Epub Date: 2017-03-28 DOI:10.1137/16M1066142
Dane Taylor, Sean A Myers, Aaron Clauset, Mason A Porter, Peter J Mucha
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引用次数: 152

Abstract

Numerous centrality measures have been developed to quantify the importances of nodes in time-independent networks, and many of them can be expressed as the leading eigenvector of some matrix. With the increasing availability of network data that changes in time, it is important to extend such eigenvector-based centrality measures to time-dependent networks. In this paper, we introduce a principled generalization of network centrality measures that is valid for any eigenvector-based centrality. We consider a temporal network with N nodes as a sequence of T layers that describe the network during different time windows, and we couple centrality matrices for the layers into a supra-centrality matrix of size NT × NT whose dominant eigenvector gives the centrality of each node i at each time t. We refer to this eigenvector and its components as a joint centrality, as it reflects the importances of both the node i and the time layer t. We also introduce the concepts of marginal and conditional centralities, which facilitate the study of centrality trajectories over time. We find that the strength of coupling between layers is important for determining multiscale properties of centrality, such as localization phenomena and the time scale of centrality changes. In the strong-coupling regime, we derive expressions for time-averaged centralities, which are given by the zeroth-order terms of a singular perturbation expansion. We also study first-order terms to obtain first-order-mover scores, which concisely describe the magnitude of nodes' centrality changes over time. As examples, we apply our method to three empirical temporal networks: the United States Ph.D. exchange in mathematics, costarring relationships among top-billed actors during the Golden Age of Hollywood, and citations of decisions from the United States Supreme Court.

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基于特征向量的时间网络中心性测度。
许多中心性度量被用来量化时间无关网络中节点的重要性,其中许多度量可以表示为某个矩阵的首特征向量。随着网络数据随时间变化的可用性的增加,将这种基于特征向量的中心性度量扩展到依赖时间的网络是很重要的。在本文中,我们介绍了网络中心性度量的一个原则性泛化,它适用于任何基于特征向量的中心性。我们将具有N个节点的时间网络视为在不同时间窗口内描述网络的T层序列,并且我们将层的中心度矩阵耦合到大小为NT × NT的超中心度矩阵中,其主导特征向量给出每个节点i在每次时间T的中心度。我们将该特征向量及其组成部分称为联合中心度。因为它反映了节点i和时间层t的重要性。我们还引入了边际中心性和条件中心性的概念,这有助于研究中心性随时间的轨迹。我们发现层间的耦合强度对于确定中心性的多尺度性质,如局域化现象和中心性变化的时间尺度非常重要。在强耦合条件下,我们导出了由奇异扰动展开的零阶项给出的时间平均中心性表达式。我们还研究了一阶项以获得一阶移动分数,该分数简明地描述了节点中心性随时间变化的大小。作为例子,我们将我们的方法应用于三个经验时态网络:美国数学博士交换,好莱坞黄金时代顶级演员之间的合作关系,以及美国最高法院判决的引用。
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来源期刊
Multiscale Modeling & Simulation
Multiscale Modeling & Simulation 数学-数学跨学科应用
CiteScore
2.80
自引率
6.20%
发文量
45
审稿时长
6-12 weeks
期刊介绍: Centered around multiscale phenomena, Multiscale Modeling and Simulation (MMS) is an interdisciplinary journal focusing on the fundamental modeling and computational principles underlying various multiscale methods. By its nature, multiscale modeling is highly interdisciplinary, with developments occurring independently across fields. A broad range of scientific and engineering problems involve multiple scales. Traditional monoscale approaches have proven to be inadequate, even with the largest supercomputers, because of the range of scales and the prohibitively large number of variables involved. Thus, there is a growing need to develop systematic modeling and simulation approaches for multiscale problems. MMS will provide a single broad, authoritative source for results in this area.
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