Joint convergence of sample autocovariance matrices when $p/n\to 0$ with application

Bhattacharjee, Monika ; Bose, Arup (2019) Joint convergence of sample autocovariance matrices when $p/n\to 0$ with application Annals of Statistics, 47 (6). ISSN 0090-5364

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Official URL: http://doi.org/10.1214/18-AOS1785

Related URL: http://dx.doi.org/10.1214/18-AOS1785

Abstract

Consider a high-dimensional linear time series model where the dimension p and the sample size n grow in such a way that p / n → 0 . Let ^ Γ u be the u th order sample autocovariance matrix. We first show that the LSD of any symmetric polynomial in { ^ Γ u , ^ Γ ∗ u , u ≥ 0 } exists under independence and moment assumptions on the driving sequence together with weak assumptions on the coefficient matrices. This LSD result, with some additional effort, implies the asymptotic normality of the trace of any polynomial in { ^ Γ u , ^ Γ ∗ u , u ≥ 0 } . We also study similar results for several independent MA processes. We show applications of the above results to statistical inference problems such as in estimation of the unknown order of a high-dimensional MA process and in graphical and significance tests for hypotheses on coefficient matrices of one or several such independent processes.

Item Type:Article
Source:Copyright of this article belongs to Institute of Mathematical Statistics.
ID Code:135035
Deposited On:18 Jan 2023 07:43
Last Modified:18 Jan 2023 07:43

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