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arxiv: 1704.07144 · v1 · pith:T537SV4Anew · submitted 2017-04-24 · 🧮 math.CO · math.PR

Bootstrap percolation in random k-uniform hypergraphs

classification 🧮 math.CO math.PR
keywords infectedverticesinitialrandomthresholdbootstrappercolationthen
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We investigate bootstrap percolation with infection threshold $r> 1$ on the binomial $k$-uniform random hypergraph $H_k(n,p)$ in the regime $n^{-1}\ll n^{k-2}p \ll n^{-1/r}$, when the initial set of infected vertices is chosen uniformly at random from all sets of given size. We establish a threshold such that if there are less vertices in the initial set of infected vertices, then whp only a few additional vertices become infected, while if the initial set of infected vertices exceeds the threshold then whp almost every vertex becomes infected. In addition, for $k=2$, we show that the probability of failure decreases exponentially.

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