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Asymptotic normality of extensible grid sampling

机译:可扩展网格采样的渐近常态

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摘要

Recently, He and Owen (J R Stat Soc Ser B 78(4):917-931, 2016) proposed the use of Hilbert's space filling curve (HSFC) in numerical integration as a way of reducing the dimension from d1 to d=1. This paper studies the asymptotic normality of the HSFC-based estimate when using one-dimensional stratification inputs. In particular, we are interested in using scrambled van der Corput sequence in any base b2 with sample sizes of the form n=bm, for which the sampling scheme is extensible in the sense of multiplying the sample size by a factor of b. We show that the estimate has an asymptotic normal distribution for functions in C1([0,1]d), excluding the trivial case of constant functions. The asymptotic normality also holds for discontinuous functions under mild conditions. Previously, it was only known that scrambled (0,m,d)-net quadratures enjoy the asymptotic normality for smooth enough functions, whose mixed partial gradients satisfy a Holder condition. As a by-product, we find lower bounds for the variance of the HSFC-based estimate. Particularly, for non-trivial functions in C1([0,1]d), the lower bound is of order n-1-2/d, which matches the rate of the upper bound established in He and Owen (2016).
机译:最近,他和欧文(JR STAT SOC SEC B 78(4):917-931,2016)提出了在数值集成中使用希尔伯特的空间填充曲线(HSFC)作为从D> 1到D =的尺寸的方式1。本文研究了使用一维分层输入时基于HSFC的估计的渐近常态。特别是,我们有兴趣在任何基础B2中使用扰乱范德群,具有n = BM的样本尺寸,其中采样方案在将样本大小乘以b的一个因素的比较方面是可扩展的。我们表明,估计在C1([0,1] D)中具有渐近正态分布,不包括恒定函数的普通情况。渐近常态也适用于温和条件下的不连续功能。以前,众所周知,扰乱(0,M,D)-NET四网元享有渐近常态,用于平稳足够的功能,其混合部分梯度满足保持器状态。作为副产品,我们发现基于HSFC的估计的差异的下限。特别地,对于C1([01] D)中的非智能函数,下限是顺序N-1-2 / D,其匹配他和欧文中建立的上限的速率(2016)。

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