Reichardt Jörg, Bornholdt Stefan
Interdisciplinary Center for Bioinformatics, University of Leipzig, Kreuzstrasse 7b, D-04103 Leipzig, Germany.
Phys Rev Lett. 2004 Nov 19;93(21):218701. doi: 10.1103/PhysRevLett.93.218701. Epub 2004 Nov 15.
A fast community detection algorithm based on a q-state Potts model is presented. Communities (groups of densely interconnected nodes that are only loosely connected to the rest of the network) are found to coincide with the domains of equal spin value in the minima of a modified Potts spin glass Hamiltonian. Comparing global and local minima of the Hamiltonian allows for the detection of overlapping ("fuzzy") communities and quantifying the association of nodes with multiple communities as well as the robustness of a community. No prior knowledge of the number of communities has to be assumed.
提出了一种基于q态Potts模型的快速社区检测算法。社区(即紧密互连的节点组,它们与网络的其余部分仅松散连接)被发现与修正的Potts自旋玻璃哈密顿量最小值中等自旋值的区域相重合。比较哈密顿量的全局最小值和局部最小值可以检测重叠(“模糊”)社区,并量化节点与多个社区的关联以及社区的稳健性。无需事先假设社区的数量。