Wu Jianshe, Jiao Licheng, Jin Chao, Liu Fang, Gong Maoguo, Shang Ronghua, Chen Weisheng
Key Laboratory of Intelligent Perception and Image Understanding of Ministry of Education of China, Xidian University, Xi'an 710071, China.
Phys Rev E Stat Nonlin Soft Matter Phys. 2012 Jan;85(1 Pt 2):016115. doi: 10.1103/PhysRevE.85.016115. Epub 2012 Jan 25.
The modular structure of a network is closely related to the dynamics toward clustering. In this paper, a method for community detection is proposed via the clustering dynamics of a network. The initial phases of the nodes in the network are given randomly, and then they evolve according to a set of dedicatedly designed differential equations. The phases of the nodes are naturally separated into several clusters after a period of evolution, and each cluster corresponds to a community in the network. For the networks with overlapping communities, the phases of the overlapping nodes will evolve to the interspace of the two communities. The proposed method is illustrated with applications to both synthetically generated and real-world complex networks.
网络的模块化结构与趋向聚类的动态特性密切相关。本文提出了一种通过网络聚类动态特性进行社区检测的方法。网络中节点的初始相位是随机给定的,然后它们根据一组专门设计的微分方程进行演化。经过一段时间的演化,节点的相位自然地被分成几个簇,每个簇对应于网络中的一个社区。对于具有重叠社区的网络,重叠节点的相位将演化到两个社区的中间区域。通过对合成生成的和真实世界的复杂网络的应用来说明所提出的方法。