Moment-Based Spectral Analysis of Random Graphs with Given Expected Degrees

In this paper, we analyze the limiting spectral distribution of the adjacency matrix of a random graph ensemble, proposed by Chung and Lu, in which a given expected degree sequence is prescribed on the ensemble. Let if there is an edge between the nodes and zero otherwise, and consider the normalized random adjacency matrix of the graph ensemble: . The empirical spectral distribution of denoted by is the empirical measure putting a mass at each of the real eigenvalues of the symmetric matrix . Under some technical conditions on the expected degree sequence, we show that with probability one, converges weakly to a deterministic distribution . Furthermore, we fully characterize this distribution by providing explicit expressions for the moments of . We apply our results to well-known degree distributions, such as power-law and exponential. The asymptotic expressions of the spectral moments in each case provide significant insights about the bulk behavior of the eigenvalue spectrum.
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