We derive uniform convergence results of lag-window spectral density estimates for a general class of multivariate stationary processes represented by an arbitrary measurable function of iid innovations. Optimal rates of convergence, that hold as both the time series and the cross section dimensions diverge, are obtained under mild and easily verifiable conditions. Our theory complements earlier results, most of which are univariate, which primarily concern in-probability, weak or distributional convergence, yet under a much stronger set of regularity conditions, such as linearity in iid innovations. Based on cross spectral density functions, we then propose a new test for independence between two stationary time series. We also explain the extent to which our results provide the foundation to derive the double asymptotic results for estimation of generalized dynamic factor models.

Asymptotic theory for spectral density estimates of general multivariate time series / Wu, W. B.; Zaffaroni, P.. - In: ECONOMETRIC THEORY. - ISSN 0266-4666. - 34:1(2018), pp. 1-22. [10.1017/S0266466617000068]

Asymptotic theory for spectral density estimates of general multivariate time series

Zaffaroni P.
2018

Abstract

We derive uniform convergence results of lag-window spectral density estimates for a general class of multivariate stationary processes represented by an arbitrary measurable function of iid innovations. Optimal rates of convergence, that hold as both the time series and the cross section dimensions diverge, are obtained under mild and easily verifiable conditions. Our theory complements earlier results, most of which are univariate, which primarily concern in-probability, weak or distributional convergence, yet under a much stronger set of regularity conditions, such as linearity in iid innovations. Based on cross spectral density functions, we then propose a new test for independence between two stationary time series. We also explain the extent to which our results provide the foundation to derive the double asymptotic results for estimation of generalized dynamic factor models.
2018
uniform convergence; factor models; nonparametric
01 Pubblicazione su rivista::01a Articolo in rivista
Asymptotic theory for spectral density estimates of general multivariate time series / Wu, W. B.; Zaffaroni, P.. - In: ECONOMETRIC THEORY. - ISSN 0266-4666. - 34:1(2018), pp. 1-22. [10.1017/S0266466617000068]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1417127
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