English

Evolution of scale-free random graphs: Potts model formulation

Statistical Mechanics 2007-05-23 v2

Abstract

We study the bond percolation problem in random graphs of NN weighted vertices, where each vertex ii has a prescribed weight PiP_i and an edge can connect vertices ii and jj with rate PiPjP_iP_j. The problem is solved by the q1q\to 1 limit of the qq-state Potts model with inhomogeneous interactions for all pairs of spins. We apply this approach to the static model having Piiμ(0<μ<1)P_i\propto i^{-\mu} (0<\mu<1) so that the resulting graph is scale-free with the degree exponent λ=1+1/μ\lambda=1+1/\mu. The number of loops as well as the giant cluster size and the mean cluster size are obtained in the thermodynamic limit as a function of the edge density, and their associated critical exponents are also obtained. Finite-size scaling behaviors are derived using the largest cluster size in the critical regime, which is calculated from the cluster size distribution, and checked against numerical simulation results. We find that the process of forming the giant cluster is qualitatively different between the cases of λ>3\lambda >3 and 2<λ<32 < \lambda <3. While for the former, the giant cluster forms abruptly at the percolation transition, for the latter, however, the formation of the giant cluster is gradual and the mean cluster size for finite NN shows double peaks.

Keywords

Cite

@article{arxiv.cond-mat/0404126,
  title  = {Evolution of scale-free random graphs: Potts model formulation},
  author = {D. -S. Lee and K. -I. Goh and B. Kahng and D. Kim},
  journal= {arXiv preprint arXiv:cond-mat/0404126},
  year   = {2007}
}

Comments

34 pages, 9 figures, elsart.cls, final version appeared in NPB