English

Second largest Eigenpair Statistics for Sparse Graphs

Statistical Mechanics 2021-04-20 v3 Disordered Systems and Neural Networks

Abstract

We develop a formalism to compute the statistics of the second largest eigenpair of weighted sparse graphs with N1N\gg 1 nodes, finite mean connectivity and bounded maximal degree, in cases where the top eigenpair statistics is known. The problem can be cast in terms of optimisation of a quadratic form on the sphere with a fictitious temperature, after a suitable deflation of the original matrix model. We use the cavity and replica methods to find the solution in terms of self-consistent equations for auxiliary probability density functions, which can be solved by an improved population dynamics algorithm enforcing eigenvector orthogonality on-the-fly. The analytical results are in perfect agreement with numerical diagonalisation of large (weighted) adjacency matrices, focussing on the cases of random regular and Erd\H{o}s-R\'enyi graphs. We further analyse the case of sparse Markov transition matrices for unbiased random walks, whose second largest eigenpair describes the non-equilibrium mode with the largest relaxation time. We also show that the population dynamics algorithm with population size NPN_P does not actually capture the thermodynamic limit NN\to\infty as commonly assumed: the accuracy of the population dynamics algorithm has a strongly non-monotonic behaviour as a function of NPN_P, thus implying that an optimal size NP=NP(N)N_P^\star=N_P^\star(N) must be chosen to best reproduce the results from numerical diagonalisation of graphs of finite size NN.

Keywords

Cite

@article{arxiv.2005.05306,
  title  = {Second largest Eigenpair Statistics for Sparse Graphs},
  author = {Vito A R Susca and Pierpaolo Vivo and Reimer Kühn},
  journal= {arXiv preprint arXiv:2005.05306},
  year   = {2021}
}

Comments

51 pages, 7 figures. Section 3.1 expanded and clarified w.r.t. the published version

R2 v1 2026-06-23T15:27:59.515Z