Rates of multivariate normal approximation for statistics in geometric probability

IF 1.8 2区 数学 Q2 STATISTICS & PROBABILITY Annals of Applied Probability Pub Date : 2021-02-28 DOI:10.1214/22-aap1822
Matthias Schulte, J. Yukich
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引用次数: 5

Abstract

We employ stabilization methods and second order Poincar\'e inequalities to establish rates of multivariate normal convergence for a large class of vectors $(H_s^{(1)},...,H_s^{(m)})$, $s \geq 1$, of statistics of marked Poisson processes on $\mathbb{R}^d$, $d \geq 2$, as the intensity parameter $s$ tends to infinity. Our results are applicable whenever the constituent functionals $H_s^{(i)}$, $i\in\{1,...,m\}$, are expressible as sums of exponentially stabilizing score functions satisfying a moment condition. The rates are for the $d_2$-, $d_3$-, and $d_{convex}$-distances. When we compare with a centered Gaussian random vector, whose covariance matrix is given by the asymptotic covariances, the rates are in general unimprovable and are governed by the rate of convergence of $s^{-1} {\rm Cov}( H_s^{(i)}, H_s^{(j)})$, $i,j\in\{1,...,m\}$, to the limiting covariance, shown to be of order $s^{-1/d}$. We use the general results to deduce rates of multivariate normal convergence for statistics arising in random graphs and topological data analysis as well as for multivariate statistics used to test equality of distributions. Some of our results hold for stabilizing functionals of Poisson input on suitable metric spaces.
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几何概率统计的多元正态逼近率
我们使用稳定化方法和二阶Poincar不等式来建立一大类向量$(H_s^{(1)},。。。,当强度参数$s$趋于无穷大时,$\mathbb{R}^d$,$d\geq2$上的标记泊松过程的统计的H_s^{(m)})$,$s\geq1$。只要构成泛函$H_s^{(i)}$,$i\in\{1,…,m\}$可以表示为满足矩条件的指数稳定分数函数的和,我们的结果就适用。费率适用于$d_2$-、$d_3$-和$d_{凸}$-距离。当我们与协方差矩阵由渐近协方差给出的中心高斯随机向量进行比较时,速率通常是不可改进的,并且由$s^{-1}{\rm-Cov}(H_s^{(i)},H_s^{(j)})$,$i,j\in\{1,…,m\}$的收敛速率控制,到极限协方差,显示为$s^{-1/d}$阶。我们使用一般结果来推导随机图和拓扑数据分析中出现的统计量以及用于检验分布相等性的多元统计量的多元正态收敛率。我们的一些结果适用于在适当的度量空间上稳定Poisson输入的泛函。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Annals of Applied Probability
Annals of Applied Probability 数学-统计学与概率论
CiteScore
2.70
自引率
5.60%
发文量
108
审稿时长
6-12 weeks
期刊介绍: The Annals of Applied Probability aims to publish research of the highest quality reflecting the varied facets of contemporary Applied Probability. Primary emphasis is placed on importance and originality.
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