The Efficiency of the Asymptotic Expansion of the Distribution of the Canonical Vector under Nonnormality

Tomoya Yamada
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引用次数: 3

Abstract

In canonical correlation analysis, canonical vectors are used in the interpretation of the canonical variables. We are interested in the asymptotic representation of the expectation, the variance and the distribution of the canonical vector. In this study, we derive the asymptotic distribution of the canonical vector under nonnormality. To obtain the asymptotic expansion of the canonical vector, we use a perturbation method. In addition, as an example, we show the asymptotic distribution with an elliptical population. In multivariate statistical analysis, the distributions of latent roots and latent vectors of certain symmetric matrices constructed from the sample covariance matrix are important in some cases and have been studied by many authors. These studies can be used as the basis for the canonical correlation analysis, which is an approach that characterizes the correlation structure between two sets of variables. Considering the distribution of the canonical correlation with the assumption of the multivariate normal population, asymptotic expansions of the distributions were studied by Sugiura (1976), Fujikoshi (1977, 1978), Muirhead (1978) and others. The distributions of a function of latent roots of the sample covariance matrix in nonnormal populations were studied by Fujikoshi (1980), Muirhead and Waternaux (1980), Fang and Krishinaiah (1982), Siotani et al. (1985), Seo et al. (1994) and others. The distribution of the canonical vector was studied by Eaton and Tyler (1994), Boik (1998), Anderson (1999), Taskinen et al. (2006) and others. This paper deals with the asymptotic expansion of the canonical vector under nonnormality. Let us denote x =( x � 1, x � 2) � as p + q dimensional variables with mean µ and
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正则向量分布在非正态下渐近展开式的有效性
在典型相关分析中,典型向量用于解释典型变量。我们感兴趣的是期望的渐近表示,方差和正则向量的分布。本文给出了正则向量在非正态下的渐近分布。为了得到正则向量的渐近展开式,我们使用了摄动方法。此外,作为一个例子,我们给出了椭圆总体的渐近分布。在多元统计分析中,由样本协方差矩阵构造的对称矩阵的隐根和隐向量的分布在某些情况下是很重要的,许多作者已经对此进行了研究。这些研究可以作为典型相关分析的基础,典型相关分析是一种表征两组变量之间相关结构的方法。Sugiura(1976)、Fujikoshi(1977,1978)、Muirhead(1978)等人考虑到典型相关在多元正态总体假设下的分布,研究了典型相关分布的渐近展开。Fujikoshi(1980)、Muirhead和Waternaux(1980)、Fang和Krishinaiah(1982)、Siotani等人(1985)、Seo等人(1994)等研究了样本协方差矩阵潜根函数在非正态总体中的分布。典型向量的分布由Eaton and Tyler(1994)、Boik(1998)、Anderson(1999)、Taskinen et al.(2006)等人研究。本文讨论了正则向量在非正态下的渐近展开式。我们将x =(x′1,x′2)′表示为p + q维变量,其平均值为µand
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