Linear spectral statistics of sequential sample covariance matrices
Independent p-dimensional vectors with independent complex or real valued entries such that πΌ [π±_i] = 0, Var (π±_i) = π_p, i=1, β¦,n, let π _n be a p Γ p Hermitian nonnegative definite matrix and f be a given function. We prove that an approriately standardized version of the stochastic process ( tr ( f(π_n,t) ) )_t β [t_0, 1] corresponding to a linear spectral statistic of the sequential empirical covariance estimator ( π_n,t )_tβ [ t_0 , 1] = ( 1/nβ_i=1^β n t βπ ^1/2_n π±_i π±_i ^βπ ^1/2_n )_tβ [ t_0 , 1] converges weakly to a non-standard Gaussian process for n,pββ. As an application we use these results to develop a novel approach for monitoring the sphericity assumption in a high-dimensional framework, even if the dimension of the underlying data is larger than the sample size.
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