Quantitative Multidimensional Central Limit Theorems for Means of the Dirichlet-Ferguson Measure

Pub Date : 2023-01-01 DOI:10.30757/alea.v20-30
G. Torrisi
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引用次数: 1

Abstract

. The Dirichlet-Ferguson measure is a cornerstone in nonparametric Bayesian statistics and the study of the distributional properties of expectations with respect to such measure is an important line of research initiated in Cifarelli and Regazzini (1979a,b) and still very active, see Letac and Piccioni (2018) and Lijoi and Prünster (2009). In this paper we provide explicit upper bounds for the d 3 , the d 2 and the convex distances between random vectors whose components are means of the Dirichlet-Ferguson measure and a random vector distributed according to the multivariate Gaussian law. These results are applied to the Gaussian approximation of linear transformations of random vectors with the Dirichlet distribution, yielding presumably optimal rates on the d 3 and the d 2 distances and presumably suboptimal rates on the convex and the Kolmogorov distances.
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Dirichlet-Ferguson测度均值的定量多维中心极限定理
。Dirichlet-Ferguson测度是非参数贝叶斯统计的基石,对该测度的期望分布特性的研究是Cifarelli和Regazzini (1979a,b)发起的一个重要研究方向,并且仍然非常活跃,参见Letac和Piccioni(2018)和Lijoi和pr nster(2009)。本文给出了以Dirichlet-Ferguson测度的均值为分量的随机向量与一个按多元高斯定律分布的随机向量之间的凸距离的显式上界和d2。这些结果应用于具有Dirichlet分布的随机向量的线性变换的高斯近似,在d3和d2距离上产生可能的最优速率,并且在凸和Kolmogorov距离上产生可能的次优速率。
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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