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arxiv: cond-mat/0701043 · v2 · submitted 2007-01-02 · ❄️ cond-mat.stat-mech · physics.bio-ph· q-bio.QM

Random matrix analysis of complex networks

classification ❄️ cond-mat.stat-mech physics.bio-phq-bio.QM
keywords networksrandommatrixscalescale-freecomplexdistributionseigenvalues
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We study complex networks under random matrix theory (RMT) framework. Using nearest-neighbor and next-nearest-neighbor spacing distributions we analyze the eigenvalues of adjacency matrix of various model networks, namely, random, scale-free and small-world networks. These distributions follow Gaussian orthogonal ensemble statistic of RMT. To probe long-range correlations in the eigenvalues we study spectral rigidity via $\Delta_3$ statistic of RMT as well. It follows RMT prediction of linear behavior in semi-logarithmic scale with slope being $\sim 1/\pi^2$. Random and scale-free networks follow RMT prediction for very large scale. Small-world network follows it for sufficiently large scale, but much less than the random and scale-free networks.

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