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首页> 外文期刊>The Annals of Statistics: An Official Journal of the Institute of Mathematical Statistics >CENTRAL LIMIT THEOREMS FOR CLASSICAL LIKELIHOOD RATIO TESTS FOR HIGH-DIMENSIONAL NORMAL DISTRIBUTIONS
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CENTRAL LIMIT THEOREMS FOR CLASSICAL LIKELIHOOD RATIO TESTS FOR HIGH-DIMENSIONAL NORMAL DISTRIBUTIONS

机译:高维正态分布的经典似然比检验的中心极限定理

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摘要

For random samples of size n obtained from p-variate normal distributions, we consider the classical likelihood ratio tests (LRT) for their means and covariance matrices in the high-dimensional setting. These test statistics have been extensively studied in multivariate analysis, and their limiting distributions under the null hypothesis were proved to be chi-square distributions as n goes to infinity and p remains fixed. In this paper, we consider the highdimensional case where both p and n go to infinity with p→y ∈ (0, 1]. We prove that the likelihood ratio test statistics under this assumption will converge in distribution to normal distributions with explicit means and variances. We perform the simulation study to show that the likelihood ratio tests using our central limit theorems outperform those using the traditional chisquare approximations for analyzing high-dimensional data.
机译:对于从p变量正态分布获得的大小为n的随机样本,我们考虑经典似然比检验(LRT)在高维环境中的均值和协方差矩阵。这些检验统计数据已在多变量分析中进行了广泛研究,并且当n变为无穷大且p保持固定时,在零假设下的极限分布被证明是卡方分布。在本文中,我们考虑了p和n都以p / n→y∈(0,1)变为无穷大的高维情况,证明了在这种假设下,似然比检验统计量将在分布上收敛为正态分布,并且我们进行了仿真研究,结果表明,使用中心极限定理的似然比检验优于使用传统卡方近似分析高维数据的似然比检验。

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