Bootstrap percolation in three dimensions
J\'ozsef Balogh, B\'ela Bollob\'as, Robert Morris

TL;DR
This paper determines the exact bootstrap percolation threshold in three dimensions for the case where the dimension and infection threshold are both three, advancing understanding of infection spread in higher-dimensional grids.
Contribution
It provides the first exact threshold for bootstrap percolation in 3D when d=r=3, extending previous asymptotic results to precise thresholds.
Findings
Exact threshold for d=r=3 determined
Results extend understanding of bootstrap percolation in higher dimensions
Lays groundwork for thresholds in all fixed d and r
Abstract
By bootstrap percolation we mean the following deterministic process on a graph . Given a set of vertices "infected" at time 0, new vertices are subsequently infected, at each time step, if they have at least previously infected neighbors. When the set is chosen at random, the main aim is to determine the critical probability at which percolation (infection of the entire graph) becomes likely to occur. This bootstrap process has been extensively studied on the -dimensional grid : with fixed, it was proved by Cerf and Cirillo (for ), and by Cerf and Manzo (in general), that \[p_c([n]^d,r)=\Theta\biggl(\frac{1}{\log_{(r-1)}n}\biggr)^{d-r+1},\] where is an -times iterated logarithm. However, the exact threshold function is only known in the case , where it was shown by Holroyd to be…
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