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Random walks on decorated Galton-Watson trees (2011.07266v2)

Published 14 Nov 2020 in math.PR

Abstract: In this article, we study a simple random walk on a decorated Galton-Watson tree, obtained from a Galton-Watson tree by replacing each vertex of degree $n$ with an independent copy of a graph $G_n$ and gluing the inserted graphs along the tree structure. We assume that there exist constants $d, R \geq 1, v < \infty$ such that the diameter, effective resistance across and volume of $G_n$ respectively grow like $n{\frac{1}{d}}, n{\frac{1}{R}}, nv$ as $n \to \infty$. We also assume that the underlying Galton-Watson tree is critical with offspring tails decaying like $cx{-\alpha}$ for some constant $c>0$ and some $\alpha \in (1,2)$. We establish the fractal dimension, spectral dimension, walk dimension and simple random walk displacement exponent for the resulting metric space as functions of $\alpha, d, R$ and $v$, along with bounds on the fluctuations of these quantities.

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