Affiliation:
1. Independent Researcher, 119234 Moscow, Russia
2. CUDAN Open Lab and School of Digital Technologies, Tallinn University, 10120 Tallinn, Estonia
Abstract
It is known that maximal entropy random walks and partition functions that count long paths on graphs tend to become localized near nodes with a high degree. Here, we revisit the simplest toy model of such a localization: a regular tree of degree p with one special node (“root”) that has a degree different from all the others. We present an in-depth study of the path-counting problem precisely at the localization transition. We study paths that start from the root in both infinite trees and finite, locally tree-like regular random graphs (RRGs). For the infinite tree, we prove that the probability distribution function of the endpoints of the path is a step function. The position of the step moves away from the root at a constant velocity v=(p−2)/p. We find the width and asymptotic shape of the distribution in the vicinity of the shock. For a finite RRG, we show that a critical slowdown takes place, and the trajectory length needed to reach the equilibrium distribution is on the order of N instead of logp−1N away from the transition. We calculate the exact values of the equilibrium distribution and relaxation length, as well as the shapes of slowly relaxing modes.
Subject
General Physics and Astronomy
Reference30 articles.
1. Newman, M.E.J. (2018). Networks, Oxford University Press.
2. Barabási, A.L. (2016). Network Science, Cambridge University Press.
3. Random walks and diffusion on networks;Masuda;Phys. Rep.,2017
4. Grosberg, A.Y., and Khokhlov, A. (1994). Statistical Physics of Macromolecules, American Institute of Physics.
5. Some problems of the statistical theory of biopolymers;Lifshitz;Sov. Phys. JETP,1969