Department of Engineering Mathematics, Merchant Venturers Building, University of Bristol, Woodland Road, Clifton, Bristol BS8 1UB, United Kingdom.
Phys Rev E. 2017 Nov;96(5-1):052313. doi: 10.1103/PhysRevE.96.052313. Epub 2017 Nov 22.
With a core-periphery structure of networks, core nodes are densely interconnected, peripheral nodes are connected to core nodes to different extents, and peripheral nodes are sparsely interconnected. Core-periphery structure composed of a single core and periphery has been identified for various networks. However, analogous to the observation that many empirical networks are composed of densely interconnected groups of nodes, i.e., communities, a network may be better regarded as a collection of multiple cores and peripheries. We propose a scalable algorithm to detect multiple nonoverlapping groups of core-periphery structure in a network. We illustrate our algorithm using synthesized and empirical networks. For example, we find distinct core-periphery pairs with different political leanings in a network of political blogs and separation between international and domestic subnetworks of airports in some single countries in a worldwide airport network.
具有网络核心-边缘结构,核心节点之间相互紧密连接,边缘节点与核心节点的连接程度不同,且边缘节点之间相互稀疏连接。已经确定了各种网络的具有单个核心和边缘的核心-边缘结构。然而,类似于许多经验网络由节点的紧密连接的群组(即社区)组成的观察结果,网络可以更好地被视为多个核心和边缘的集合。我们提出了一种可扩展的算法来检测网络中的多个非重叠核心-边缘结构组。我们使用合成和经验网络来说明我们的算法。例如,我们在政治博客网络中发现了具有不同政治倾向的不同核心-边缘对,以及在全球机场网络中一些单个国家的机场的国际和国内子网之间的分离。