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Latent variable nonparametric cointegrating regression

Latent variable nonparametric cointegrating regression
Latent variable nonparametric cointegrating regression
This article studies the asymptotic properties of empirical nonparametric regressions that partially misspecify the relationships between nonstationary variables. In particular, we analyze nonparametric kernel regressions in which a potential nonlinear cointegrating regression is misspecified through the use of a proxy regressor in place of the true regressor. Such models occur in linear and nonlinear regressions where the regressor suffers from measurement error or where the true regressor is a latent or filtered variable as in mixed-data-sampling. The treatment allows for endogenous regressors as the latent variable and proxy variables that cointegrate asymptotically with the true latent variable, including correctly specified as well as misspecified systems, and is therefore intermediate between nonlinear nonparametric cointegrating regression and completely spurious nonparametric nonstationary regression. The results relate to recent work on dynamic misspecification in nonparametric nonstationary systems and the limit theory accommodates regressor variables with autoregressive roots that are local to unity and whose errors are driven by long memory and short memory innovations, thereby encompassing applications with a wide range of economic and financial time series. Some implications for forecasting under misspecification are also examined.
0266-4666
Wang, Qiying
383180c7-4d60-4bb7-aa21-d4f9bc86ea81
Phillips, Peter Charles Bonest
f67573a4-fc30-484c-ad74-4bbc797d7243
Kasparis, Ioannis
78354f4d-e78d-467f-a130-78052d7960a7
Wang, Qiying
383180c7-4d60-4bb7-aa21-d4f9bc86ea81
Phillips, Peter Charles Bonest
f67573a4-fc30-484c-ad74-4bbc797d7243
Kasparis, Ioannis
78354f4d-e78d-467f-a130-78052d7960a7

Wang, Qiying, Phillips, Peter Charles Bonest and Kasparis, Ioannis (2020) Latent variable nonparametric cointegrating regression. Econometric Theory. (doi:10.1017/S0266466620000122).

Record type: Article

Abstract

This article studies the asymptotic properties of empirical nonparametric regressions that partially misspecify the relationships between nonstationary variables. In particular, we analyze nonparametric kernel regressions in which a potential nonlinear cointegrating regression is misspecified through the use of a proxy regressor in place of the true regressor. Such models occur in linear and nonlinear regressions where the regressor suffers from measurement error or where the true regressor is a latent or filtered variable as in mixed-data-sampling. The treatment allows for endogenous regressors as the latent variable and proxy variables that cointegrate asymptotically with the true latent variable, including correctly specified as well as misspecified systems, and is therefore intermediate between nonlinear nonparametric cointegrating regression and completely spurious nonparametric nonstationary regression. The results relate to recent work on dynamic misspecification in nonparametric nonstationary systems and the limit theory accommodates regressor variables with autoregressive roots that are local to unity and whose errors are driven by long memory and short memory innovations, thereby encompassing applications with a wide range of economic and financial time series. Some implications for forecasting under misspecification are also examined.

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Accepted/In Press date: 4 February 2020
e-pub ahead of print date: 23 March 2020
Additional Information: Publisher Copyright: © 2020 Cambridge University Press.

Identifiers

Local EPrints ID: 437840
URI: http://eprints.soton.ac.uk/id/eprint/437840
ISSN: 0266-4666
PURE UUID: f25d2050-f31b-4fd3-9539-8154c9f1d30e
ORCID for Peter Charles Bonest Phillips: ORCID iD orcid.org/0000-0003-2341-0451

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Date deposited: 19 Feb 2020 17:32
Last modified: 16 Mar 2024 06:24

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Contributors

Author: Qiying Wang
Author: Ioannis Kasparis

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