In this paper, we show that the diagonal of a high-dimensional sample covariance matrix stemming from $n$ independent observations of a $p$-dimensional time series with finite fourth moments can be approximated in spectral norm by the diagonal of the population covariance matrix. We assume that $n,p\to \infty$ with $p/n$ tending to a constant which might be positive or zero. As applications, we provide an approximation of the sample correlation matrix ${\mathbf R}$ and derive a variety of results for its eigenvalues. We identify the limiting spectral distribution of ${\mathbf R}$ and construct an estimator for the population correlation matrix and its eigenvalues. Finally, the almost sure limits of the extreme eigenvalues of ${\mathbf R}$ in a generalized spiked correlation model are analyzed.
翻译:在本文中,我们展示了高维样本共变矩阵的二角形,该矩阵来自美元独立观测,以美元独立测算,以美元为维维时序列,并有有限的第四秒。根据人口共变矩阵的二角形,可以在光谱规范中以人口共变矩阵的二角形相近。我们假定,美元,p\\\\\\\\\\infy$,以美元/n$为常数,可能为正值或零值。作为应用,我们提供了样本相关性矩阵的近似值,$(mathbf R}),并得出了各种结果。我们确定了美元限制光谱分布,并为人口相关矩阵及其元值构建了一个估计符。最后,我们分析了在普遍加压的关联模型中,美元(mathbf R) 的极端精度值的极限值几乎可以确定。