Leicht E A, Holme Petter, Newman M E J
Department of Physics, University of Michigan, Ann Arbor, Michigan 48109, USA.
Phys Rev E Stat Nonlin Soft Matter Phys. 2006 Feb;73(2 Pt 2):026120. doi: 10.1103/PhysRevE.73.026120. Epub 2006 Feb 17.
We consider methods for quantifying the similarity of vertices in networks. We propose a measure of similarity based on the concept that two vertices are similar if their immediate neighbors in the network are themselves similar. This leads to a self-consistent matrix formulation of similarity that can be evaluated iteratively using only a knowledge of the adjacency matrix of the network. We test our similarity measure on computer-generated networks for which the expected results are known, and on a number of real-world networks.
我们考虑量化网络中顶点相似性的方法。我们基于这样一种概念提出了一种相似性度量:如果网络中两个顶点的直接邻居本身相似,那么这两个顶点就是相似的。这导致了一种相似性的自洽矩阵公式,该公式可以仅使用网络邻接矩阵的知识进行迭代评估。我们在预期结果已知的计算机生成网络以及一些真实世界网络上测试了我们的相似性度量。