Arrigo Francesca, Higham Desmond J, Tudisco Francesco
Department of Mathematics and Statistics, University of Strathclyde, Glasgow G1 1XH, UK.
School of Mathematics, University of Edinburgh, Edinburgh EH9 3FD, UK.
Proc Math Phys Eng Sci. 2020 Apr;476(2236):20190724. doi: 10.1098/rspa.2019.0724. Epub 2020 Apr 15.
We propose and analyse a general tensor-based framework for incorporating second-order features into network measures. This approach allows us to combine traditional pairwise links with information that records whether triples of nodes are involved in wedges or triangles. Our treatment covers classical spectral methods and recently proposed cases from the literature, but we also identify many interesting extensions. In particular, we define a mutually reinforcing (spectral) version of the classical clustering coefficient. The underlying object of study is a constrained nonlinear eigenvalue problem associated with a cubic tensor. Using recent results from nonlinear Perron-Frobenius theory, we establish existence and uniqueness under appropriate conditions, and show that the new spectral measures can be computed efficiently with a nonlinear power method. To illustrate the added value of the new formulation, we analyse the measures on a class of synthetic networks. We also give computational results on centrality and link prediction for real-world networks.
我们提出并分析了一个基于张量的通用框架,用于将二阶特征纳入网络度量。这种方法使我们能够将传统的成对链接与记录节点三元组是否参与楔或三角形的信息相结合。我们的处理涵盖了经典谱方法和文献中最近提出的情况,但我们也确定了许多有趣的扩展。特别是,我们定义了经典聚类系数的一种相互增强(谱)版本。研究的基础对象是与三次张量相关的约束非线性特征值问题。利用非线性Perron-Frobenius理论的最新结果,我们在适当条件下建立了存在性和唯一性,并表明可以用非线性幂法有效地计算新的谱度量。为了说明新公式的附加值,我们分析了一类合成网络上的度量。我们还给出了真实世界网络的中心性和链接预测的计算结果。