A Sharp Threshold for Bootstrap Percolation in a Random Hypergraph
Abstract
Given a hypergraph , the -bootstrap process starts with an initial set of infected vertices of and, at each step, a healthy vertex becomes infected if there exists a hyperedge of in which is the unique healthy vertex. We say that the set of initially infected vertices percolates if every vertex of is eventually infected. We show that this process exhibits a sharp threshold when is a hypergraph obtained by randomly sampling hyperedges from an approximately -regular -uniform hypergraph satisfying some mild degree and codegree conditions; this confirms a conjecture of Morris. As a corollary, we obtain a sharp threshold for a variant of the graph bootstrap process for strictly -balanced graphs which generalises a result of Kor\'{a}ndi, Peled and Sudakov. Our approach involves an application of the differential equations method.
Cite
@article{arxiv.1806.02903,
title = {A Sharp Threshold for Bootstrap Percolation in a Random Hypergraph},
author = {Natasha Morrison and Jonathan A. Noel},
journal= {arXiv preprint arXiv:1806.02903},
year = {2020}
}