Asymptotics of ultra-high-dimensional generalized spiked sample covariance matrix
Abstract
This paper investigates the asymptotics of eigenstructure of sample covariance matrix under the spiked covariance matrix model in ultra-high-dimensional settings, where the dimensionality can grow much faster than the sample size with p nα , α > 1 . We establish the first-order convergence limits of eigenvalue locations and eigenvector projections of properly scaled sample covariance matrix. Our results are extensions of bloemendal16,ding21.
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