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真实多重网络中的渗流

Percolation in real multiplex networks.

作者信息

Bianconi Ginestra, Radicchi Filippo

机构信息

School of Mathematical Sciences, Queen Mary University of London, London, E1 4NS, United Kingdom.

Center for Complex Networks and Systems Research, School of Informatics and Computing, Indiana University, Bloomington, Indiana 47408, USA.

出版信息

Phys Rev E. 2016 Dec;94(6-1):060301. doi: 10.1103/PhysRevE.94.060301. Epub 2016 Dec 16.

Abstract

We present an exact mathematical framework able to describe site-percolation transitions in real multiplex networks. Specifically, we consider the average percolation diagram valid over an infinite number of random configurations where nodes are present in the system with given probability. The approach relies on the locally treelike ansatz, so that it is expected to accurately reproduce the true percolation diagram of sparse multiplex networks with negligible number of short loops. The performance of our theory is tested in social, biological, and transportation multiplex graphs. When compared against previously introduced methods, we observe improvements in the prediction of the percolation diagrams in all networks analyzed. Results from our method confirm previous claims about the robustness of real multiplex networks, in the sense that the average connectedness of the system does not exhibit any significant abrupt change as its individual components are randomly destroyed.

摘要

我们提出了一个精确的数学框架,能够描述真实多重网络中的位点渗流转变。具体而言,我们考虑在无限数量的随机配置上有效的平均渗流图,其中节点以给定概率出现在系统中。该方法依赖于局部树状假设,因此有望准确再现短环数量可忽略不计的稀疏多重网络的真实渗流图。我们的理论在社会、生物和交通多重图中进行了测试。与先前引入的方法相比,我们发现在所有分析的网络中,渗流图的预测都有改进。我们方法的结果证实了先前关于真实多重网络稳健性的说法,即当系统的各个组件被随机破坏时,系统的平均连通性不会出现任何显著的突变。

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