Bootstrap percolation with inhibition
Hafsteinn Einarsson, Johannes Lengler, Konstantinos Panagiotou, Frank, Mousset, Angelika Steger

TL;DR
This paper introduces a variant of bootstrap percolation with inhibitory vertices on Erdős-Rényi graphs, revealing non-monotonic behavior and increased stability in a continuous-time model, aligning with real-world network phenomena.
Contribution
It models inhibitory effects in bootstrap percolation, demonstrating non-monotonic and unstable dynamics in discrete rounds, and shows improved stability and speed in a continuous-time framework.
Findings
Presence of hindering vertices causes non-monotonic percolation.
Continuous-time model stabilizes the process and accelerates percolation.
Small changes in initial active set size dramatically affect outcomes.
Abstract
Bootstrap percolation is a prominent framework for studying the spreading of activity on a graph. We begin with an initial set of active vertices. The process then proceeds in rounds, and further vertices become active as soon as they have a certain number of active neighbors. A recurring feature in bootstrap percolation theory is an `all-or-nothing' phenomenon: either the size of the starting set is so small that the process stops very soon, or it percolates (almost) completely. Motivated by several important phenomena observed in various types of real-world networks we propose in this work a variant of bootstrap percolation that exhibits a vastly different behavior. Our graphs have two types of vertices: some of them obstruct the diffusion, while the others facilitate it. We study the effect of this setting by analyzing the process on Erd\H{o}s-R\'enyi random graphs. Our main…
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