Bolla Marianna
Institute of Mathematics, Budapest University of Technology and Economics, Budapest, Hungary.
Phys Rev E Stat Nonlin Soft Matter Phys. 2011 Jul;84(1 Pt 2):016108. doi: 10.1103/PhysRevE.84.016108. Epub 2011 Jul 25.
Two penalized-balanced and normalized-versions of the Newman-Girvan modularity are introduced and estimated by the non-negative eigenvalues of the modularity and normalized modularity matrix, respectively. In this way, the partition of the vertices that maximizes the modularity can be obtained by applying the k-means algorithm for the representatives of the vertices based on the eigenvectors belonging to the largest positive eigenvalues of the modularity or normalized modularity matrix. The proper dimension depends on the number of the structural eigenvalues of positive sign, while dominating negative eigenvalues indicate an anticommunity structure; the balance between the negative and the positive eigenvalues determines whether the underlying graph has a community, anticommunity, or randomlike structure.
引入了纽曼 - 吉尔万模块化的两种惩罚平衡和归一化版本,并分别通过模块化矩阵和归一化模块化矩阵的非负特征值进行估计。通过这种方式,基于属于模块化或归一化模块化矩阵最大正特征值的特征向量,对顶点代表应用k均值算法,可得到使模块化最大化的顶点划分。合适的维度取决于正号结构特征值的数量,而占主导的负特征值表明存在反社区结构;正负特征值之间的平衡决定了基础图具有社区、反社区还是类随机结构。