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Uniform consistency of nonstationary kernel-weighted sample covariances for nonparametric regression

Uniform consistency of nonstationary kernel-weighted sample covariances for nonparametric regression
Uniform consistency of nonstationary kernel-weighted sample covariances for nonparametric regression
We obtain uniform consistency results for kernel-weighted sample covariances in a nonstationary multiple regression framework that allows for both fixed design and random design coefficient variation. In the fixed design case these nonparametric sample covariances have different uniform asymptotic rates depending on direction, a result that differs fundamentally from the random design and stationary cases. The uniform asymptotic rates derived exceed the corresponding rates in the stationary case and confirm the existence of uniform super-consistency. The modelling framework and convergence rates allow for endogeneity and thus broaden the practical econometric import of these results. As a specific application, we establish uniform consistency of nonparametric kernel estimators of the coefficient functions in nonlinear cointegration models with time varying coefficients or functional coefficients, and provide sharp convergence rates. For the fixed design models, in particular, there are two uniform convergence rates that apply in two different directions, both rates exceeding the usual rate in the stationary case.
655-685
Li, Degui
e341f702-23cd-4c1a-91a8-3b7aa3dfda15
Phillips, Peter
f67573a4-fc30-484c-ad74-4bbc797d7243
Gao, Jiti
fb907009-eef0-4e30-aca7-b484324f4955
Li, Degui
e341f702-23cd-4c1a-91a8-3b7aa3dfda15
Phillips, Peter
f67573a4-fc30-484c-ad74-4bbc797d7243
Gao, Jiti
fb907009-eef0-4e30-aca7-b484324f4955

Li, Degui, Phillips, Peter and Gao, Jiti (2016) Uniform consistency of nonstationary kernel-weighted sample covariances for nonparametric regression. Econometric Theory, 32 (3), 655-685. (doi:10.1017/S0266466615000109).

Record type: Article

Abstract

We obtain uniform consistency results for kernel-weighted sample covariances in a nonstationary multiple regression framework that allows for both fixed design and random design coefficient variation. In the fixed design case these nonparametric sample covariances have different uniform asymptotic rates depending on direction, a result that differs fundamentally from the random design and stationary cases. The uniform asymptotic rates derived exceed the corresponding rates in the stationary case and confirm the existence of uniform super-consistency. The modelling framework and convergence rates allow for endogeneity and thus broaden the practical econometric import of these results. As a specific application, we establish uniform consistency of nonparametric kernel estimators of the coefficient functions in nonlinear cointegration models with time varying coefficients or functional coefficients, and provide sharp convergence rates. For the fixed design models, in particular, there are two uniform convergence rates that apply in two different directions, both rates exceeding the usual rate in the stationary case.

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More information

e-pub ahead of print date: 11 May 2015
Published date: June 2016
Organisations: Economics

Identifiers

Local EPrints ID: 407563
URI: http://eprints.soton.ac.uk/id/eprint/407563
PURE UUID: b03efdb7-45f2-433e-9005-d68ae9b83060
ORCID for Peter Phillips: ORCID iD orcid.org/0000-0003-2341-0451

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Date deposited: 13 Apr 2017 01:09
Last modified: 15 Mar 2024 12:45

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Contributors

Author: Degui Li
Author: Peter Phillips ORCID iD
Author: Jiti Gao

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