Morzy Mikołaj, Kajdanowicz Tomasz
Institute of Computer Science, Poznań University of Technology, 60-965 Poznań, Poland.
Center for Artificial Intelligence and Machine Learning CAMIL, Poznan University of Technology, 60-965 Poznań, Poland.
Entropy (Basel). 2018 Nov 30;20(12):916. doi: 10.3390/e20120916.
Graph energy is the energy of the matrix representation of the graph, where the energy of a matrix is the sum of singular values of the matrix. Depending on the definition of a matrix, one can contemplate graph energy, Randić energy, Laplacian energy, distance energy, and many others. Although theoretical properties of various graph energies have been investigated in the past in the areas of mathematics, chemistry, physics, or graph theory, these explorations have been limited to relatively small graphs representing chemical compounds or theoretical graph classes with strictly defined properties. In this paper we investigate the usefulness of the concept of graph energy in the context of large, complex networks. We show that when graph energies are applied to local egocentric networks, the values of these energies correlate strongly with vertex centrality measures. In particular, for some generative network models graph energies tend to correlate strongly with the betweenness and the eigencentrality of vertices. As the exact computation of these centrality measures is expensive and requires global processing of a network, our research opens the possibility of devising efficient algorithms for the estimation of these centrality measures based only on local information.
图能量是图的矩阵表示的能量,其中矩阵的能量是矩阵奇异值的总和。根据矩阵的定义,可以考虑图能量、兰迪奇能量、拉普拉斯能量、距离能量等等。尽管过去在数学、化学、物理或图论领域对各种图能量的理论性质进行了研究,但这些探索仅限于表示化合物的相对较小的图或具有严格定义性质的理论图类。在本文中,我们研究了图能量概念在大型复杂网络背景下的有用性。我们表明,当将图能量应用于局部自我中心网络时,这些能量的值与顶点中心性度量密切相关。特别是,对于一些生成网络模型,图能量往往与顶点的介数和特征中心性密切相关。由于这些中心性度量的精确计算成本高昂且需要对网络进行全局处理,我们的研究为仅基于局部信息设计估计这些中心性度量的高效算法开辟了可能性。