Poisson point process convergence and extreme values in stochastic geometry
Abstract
Let be a Poisson point process with intensity measure , , over a Borel space , where is a fixed measure. Another point process on the real line is constructed by applying a symmetric function to every -tuple of distinct points of . It is shown that behaves after appropriate rescaling like a Poisson point process, as , under suitable conditions on and . This also implies Weibull limit theorems for related extreme values. The result is then applied to investigate problems arising in stochastic geometry, including small cells in Voronoi tessellations, random simplices generated by non-stationary hyperplane processes, triangular counts with angular constraints and non-intersecting -flats. Similar results are derived if the underlying Poisson point process is replaced by a binomial point process.
Cite
@article{arxiv.1510.00289,
title = {Poisson point process convergence and extreme values in stochastic geometry},
author = {Matthias Schulte and Christoph Thaele},
journal= {arXiv preprint arXiv:1510.00289},
year = {2015}
}
Comments
Chapter of the forthcoming book "Stochastic analysis for Poisson point processes: Malliavin calculus, Wiener-It\=o chaos expansions and stochastic geometry" edited by G. Peccati and M. Reitzner