Exploring the "Middle Earth" of Network Spectra via a Gaussian Matrix Function
July 28, 2016 Β· Declared Dead Β· π Chaos
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Authors
Ernesto Estrada, Alhanouf Ali Alhomaidhi, Fawzi Al-Thukair
arXiv ID
1607.08812
Category
physics.soc-ph
Cross-listed
cs.SI,
math.SP
Citations
9
Venue
Chaos
Last Checked
3 months ago
Abstract
We study a Gaussian matrix function of the adjacency matrix of artificial and real-world networks. In particular, we study the Gaussian Estrada index---an index characterizing the importance of eigenvalues close to zero. This index accounts for the information contained in the eigenvalues close to zero in the spectra of networks. Here we obtain bounds for this index in simple graphs, proving that it reaches its maximum for star graphs followed by complete bipartite graphs. We also obtain formulas for the Estrada Gaussian index of ErdΕs-RΓ©nyi random graphs as well as for the BarabΓ‘si-Albert graphs. We also show that in real-world networks this index is related to the existence of important structural patterns, such as complete bipartite subgraphs (bicliques). Such bicliques appear naturally in many real-world networks as a consequence of the evolutionary processes giving rise to them. In general, the Gaussian matrix function of the adjacency matrix of networks characterizes important structural information not described in previously used matrix functions of graphs.
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