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Spectral analysis of linear time series in moderately high dimensions

Abstract

This article is concerned with the spectral behavior of pp-dimensional linear processes in the moderately high-dimensional case when both dimensionality pp and sample size nn tend to infinity so that p/n→0p/n\to0. It is shown that, under an appropriate set of assumptions, the empirical spectral distributions of the renormalized and symmetrized sample autocovariance matrices converge almost surely to a nonrandom limit distribution supported on the real line. The key assumption is that the linear process is driven by a sequence of pp-dimensional real or complex random vectors with i.i.d. entries possessing zero mean, unit variance and finite fourth moments, and that the p×pp\times p linear process coefficient matrices are Hermitian and simultaneously diagonalizable. Several relaxations of these assumptions are discussed. The results put forth in this paper can help facilitate inference on model parameters, model diagnostics and prediction of future values of the linear process

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