Multicritical continuous random trees
Abstract
We introduce generalizations of Aldous' Brownian Continuous Random Tree as scaling limits for multicritical models of discrete trees. These discrete models involve trees with fine-tuned vertex-dependent weights ensuring a k-th root singularity in their generating function. The scaling limit involves continuous trees with branching points of order up to k+1. We derive explicit integral representations for the average profile of this k-th order multicritical continuous random tree, as well as for its history distributions measuring multi-point correlations. The latter distributions involve non-positive universal weights at the branching points together with fractional derivative couplings. We prove universality by rederiving the same results within a purely continuous axiomatic approach based on the resolution of a set of consistency relations for the multi-point correlations. The average profile is shown to obey a fractional differential equation whose solution involves hypergeometric functions and matches the integral formula of the discrete approach.
Cite
@article{arxiv.math-ph/0603007,
title = {Multicritical continuous random trees},
author = {J. Bouttier and P. Di Francesco and E. Guitter},
journal= {arXiv preprint arXiv:math-ph/0603007},
year = {2007}
}
Comments
34 pages, 12 figures, uses lanlmac, hyperbasics, epsf