arXiv Analytics

Sign in

arXiv:1409.6380 [math.PR]AbstractReferencesReviewsResources

Normal approximation of Gibbsian sums in geometric probability

Aihua Xia, J. E. Yukich

Published 2014-09-23Version 1

This paper concerns the asymptotic behavior of a random variable $W_\lambda$ resulting from the summation of the functionals of a Gibbsian spatial point process over windows $Q_\lambda \uparrow R^d$. We establish conditions ensuring that $W_\lambda$ has volume order fluctuations, that is they coincide with the fluctuations of functionals of Poisson spatial point processes. We combine this result with Stein's method to deduce rates of normal approximation for $W_\lambda$, as $\lambda\to\infty$. Our general results establish variance asymptotics and central limit theorems for statistics of random geometric and related Euclidean graphs on Gibbsian input. We also establish similar limit theory for claim sizes of insurance models with Gibbsian input, the number of maximal points of a Gibbsian sample, and the size of spatial birth-growth models with Gibbsian input.

Related articles: Most relevant | Search more
arXiv:2011.07781 [math.PR] (Published 2020-11-16)
Normal approximation in total variation for statistics in geometric probability
arXiv:math/0409088 [math.PR] (Published 2004-09-06)
Normal Approximation in Geometric Probability
arXiv:1401.7568 [math.PR] (Published 2014-01-29)
Normal approximation on Poisson spaces: Mehler's formula, second order Poincaré inequalities and stabilization