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首页> 外文期刊>Bernoulli: official journal of the Bernoulli Society for Mathematical Statistics and Probability >CLT for eigenvalue statistics of large-dimensional general Fisher matrices with applications
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CLT for eigenvalue statistics of large-dimensional general Fisher matrices with applications

机译:具有应用的大维通用Fisher矩阵的特征值统计

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摘要

Random Fisher matrices arise naturally in multivariate statistical analysis and understanding the properties of its eigenvalues is of primary importance for many hypothesis testing problems like testing the equality between two covariance matrices, or testing the independence between sub-groups of a multivariate random vector. Most of the existing work on random Fisher matrices deals with a particular situation where the population covariance matrices are equal. In this paper, we consider general Fisher matrices with arbitrary population covariance matrices and develop their spectral properties when the dimensions are proportionally large compared to the sample size. The paper has two main contributions: first the limiting distribution of the eigenvalues of a general Fisher matrix is found and second, a central limit theorem is established for a wide class of functionals of these eigenvalues. Applications of the main results are also developed for testing hypotheses on high-dimensional covariance matrices.
机译:随机渔业矩阵自然地出现多元统计分析,了解其特征值的性质对于许多假设测试问题,如测试两个协方差矩阵之间的平等,或者测试多变量随机向量之间的子组之间的独立性。随机费舍尔矩阵上的大部分工作都处理了人口协方差矩阵相等的特殊情况。在本文中,我们认为具有任意群体协方差矩阵的一般Fisher矩阵,并在与样品大小相比尺寸与样品相比成比例大时,发育光谱性能。本文有两个主要贡献:首先发现了一般渔业矩阵的特征值的限制分布,第二个,为这些特征值的广泛功能建立了中央极限定理。主要结果的应用也用于测试高维协方差矩阵上的假设。

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