Li Hui-Jia, Wang Yong, Wu Ling-Yun, Zhang Junhua, Zhang Xiang-Sun
Academy of Mathematics and Systems Science, Chinese Academy of Science, Beijing 100190, China.
Phys Rev E Stat Nonlin Soft Matter Phys. 2012 Jul;86(1 Pt 2):016109. doi: 10.1103/PhysRevE.86.016109. Epub 2012 Jul 20.
The Potts model is a powerful tool to uncover community structure in complex networks. Here, we propose a framework to reveal the optimal number of communities and stability of network structure by quantitatively analyzing the dynamics of the Potts model. Specifically we model the community structure detection Potts procedure by a Markov process, which has a clear mathematical explanation. Then we show that the local uniform behavior of spin values across multiple timescales in the representation of the Markov variables could naturally reveal the network's hierarchical community structure. In addition, critical topological information regarding multivariate spin configuration could also be inferred from the spectral signatures of the Markov process. Finally an algorithm is developed to determine fuzzy communities based on the optimal number of communities and the stability across multiple timescales. The effectiveness and efficiency of our algorithm are theoretically analyzed as well as experimentally validated.
Potts模型是揭示复杂网络中社区结构的有力工具。在此,我们提出一个框架,通过定量分析Potts模型的动力学来揭示社区的最优数量和网络结构的稳定性。具体而言,我们用一个具有清晰数学解释的马尔可夫过程对社区结构检测的Potts过程进行建模。然后我们表明,马尔可夫变量表示中自旋值在多个时间尺度上的局部均匀行为能够自然地揭示网络的分层社区结构。此外,关于多元自旋配置的关键拓扑信息也可以从马尔可夫过程的谱特征中推断出来。最后,开发了一种基于社区最优数量和多个时间尺度上的稳定性来确定模糊社区的算法。我们从理论上分析并通过实验验证了该算法的有效性和效率。