Clustering, percolation and directionally convex ordering of point processes
B. Blaszczyszyn, D. Yogeshwaran

TL;DR
This paper investigates how clustering in point processes affects their percolation properties, examining the $dcx$ ordering and introducing new bounds for critical radii, with implications for various stochastic models.
Contribution
It demonstrates that the $dcx$ ordering relates to percolation thresholds, introduces new bounds for critical radii, and explores phase transitions in shot-noise based percolation models.
Findings
$dcx$ ordering correlates with clustering tendencies.
New bounds for critical radii are established.
Phase transitions occur in certain shot-noise percolation models.
Abstract
Heuristics indicate that point processes exhibiting clustering of points have larger critical radius for the percolation of their continuum percolation models than spatially homogeneous point processes. It has already been shown, and we reaffirm it in this paper, that the ordering of point processes is suitable to compare their clustering tendencies. Hence, it was tempting to conjecture that is increasing in order. Some numerical evidences support this conjecture for a special class of point processes, called perturbed lattices, which are "toy models" for determinantal and permanental point processes. However, the conjecture is not true in full generality, since one can construct a Cox point process with degenerate critical radius , that is larger than a given homogeneous Poisson point process. Nevertheless, we are able to compare some nonstandard…
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Taxonomy
TopicsStochastic processes and statistical mechanics · Point processes and geometric inequalities · Random Matrices and Applications
