Bootstrapping non-stationary stochastic volatility

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Bootstrapping non-stationary stochastic volatility. / Boswijk, H. Peter; Cavaliere, Giuseppe; Georgiev, Iliyan; Rahbek, Anders.

I: Journal of Econometrics, Bind 224, Nr. 1, 2021.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Boswijk, HP, Cavaliere, G, Georgiev, I & Rahbek, A 2021, 'Bootstrapping non-stationary stochastic volatility', Journal of Econometrics, bind 224, nr. 1. https://doi.org/10.1016/j.jeconom.2021.01.005

APA

Boswijk, H. P., Cavaliere, G., Georgiev, I., & Rahbek, A. (2021). Bootstrapping non-stationary stochastic volatility. Journal of Econometrics, 224(1). https://doi.org/10.1016/j.jeconom.2021.01.005

Vancouver

Boswijk HP, Cavaliere G, Georgiev I, Rahbek A. Bootstrapping non-stationary stochastic volatility. Journal of Econometrics. 2021;224(1). https://doi.org/10.1016/j.jeconom.2021.01.005

Author

Boswijk, H. Peter ; Cavaliere, Giuseppe ; Georgiev, Iliyan ; Rahbek, Anders. / Bootstrapping non-stationary stochastic volatility. I: Journal of Econometrics. 2021 ; Bind 224, Nr. 1.

Bibtex

@article{45e6aea2d39b47bda05cd02a2cb050eb,
title = "Bootstrapping non-stationary stochastic volatility",
abstract = "In this paper we investigate to what extent the bootstrap can be applied to conditional mean models, such as regression or time series models, when the volatility of the innovations is random and possibly non-stationary. In fact, the volatility of many economic and financial time series displays persistent changes and possible non-stationarity. However, the theory of the bootstrap for such models has focused on deterministic changes of the unconditional variance and little is known about the performance and the validity of the bootstrap when the volatility is driven by a non-stationary stochastic process. This includes near-integrated exogenous volatility processes as well as near-integrated GARCH processes, where the conditional variance has a diffusion limit; a further important example is the case where volatility exhibits infrequent jumps. This paper fills this gap in the literature by developing conditions for bootstrap validity in time series and regression models with non-stationary, stochastic volatility. We show that in such cases the distribution of bootstrap statistics (conditional on the data) is random in the limit. Consequently, the conventional approaches to proofs of bootstrap consistency, based on the notion of weak convergence in probability of the bootstrap statistic, fail to deliver the required validity results. Instead, we use the concept of {\textquoteleft}weak convergence in distribution{\textquoteright} to develop and establish novel conditions for validity of the wild bootstrap, conditional on the volatility process. We apply our results to several testing problems in the presence of non-stationary stochastic volatility, including testing in a location model, testing for structural change using CUSUM-type functionals, and testing for a unit root in autoregressive models. Importantly, we work under sufficient conditions for bootstrap validity that include the absence of statistical leverage effects, i.e., correlation between the error process and its future conditional variance. The results of the paper are illustrated using Monte Carlo simulations, which indicate that a wild bootstrap approach leads to size control even in small samples.",
keywords = "Bootstrap, Non-stationary stochastic volatility, Random limit measures, Weak convergence in distribution",
author = "Boswijk, {H. Peter} and Giuseppe Cavaliere and Iliyan Georgiev and Anders Rahbek",
year = "2021",
doi = "10.1016/j.jeconom.2021.01.005",
language = "English",
volume = "224",
journal = "Journal of Econometrics",
issn = "0304-4076",
publisher = "Elsevier",
number = "1",

}

RIS

TY - JOUR

T1 - Bootstrapping non-stationary stochastic volatility

AU - Boswijk, H. Peter

AU - Cavaliere, Giuseppe

AU - Georgiev, Iliyan

AU - Rahbek, Anders

PY - 2021

Y1 - 2021

N2 - In this paper we investigate to what extent the bootstrap can be applied to conditional mean models, such as regression or time series models, when the volatility of the innovations is random and possibly non-stationary. In fact, the volatility of many economic and financial time series displays persistent changes and possible non-stationarity. However, the theory of the bootstrap for such models has focused on deterministic changes of the unconditional variance and little is known about the performance and the validity of the bootstrap when the volatility is driven by a non-stationary stochastic process. This includes near-integrated exogenous volatility processes as well as near-integrated GARCH processes, where the conditional variance has a diffusion limit; a further important example is the case where volatility exhibits infrequent jumps. This paper fills this gap in the literature by developing conditions for bootstrap validity in time series and regression models with non-stationary, stochastic volatility. We show that in such cases the distribution of bootstrap statistics (conditional on the data) is random in the limit. Consequently, the conventional approaches to proofs of bootstrap consistency, based on the notion of weak convergence in probability of the bootstrap statistic, fail to deliver the required validity results. Instead, we use the concept of ‘weak convergence in distribution’ to develop and establish novel conditions for validity of the wild bootstrap, conditional on the volatility process. We apply our results to several testing problems in the presence of non-stationary stochastic volatility, including testing in a location model, testing for structural change using CUSUM-type functionals, and testing for a unit root in autoregressive models. Importantly, we work under sufficient conditions for bootstrap validity that include the absence of statistical leverage effects, i.e., correlation between the error process and its future conditional variance. The results of the paper are illustrated using Monte Carlo simulations, which indicate that a wild bootstrap approach leads to size control even in small samples.

AB - In this paper we investigate to what extent the bootstrap can be applied to conditional mean models, such as regression or time series models, when the volatility of the innovations is random and possibly non-stationary. In fact, the volatility of many economic and financial time series displays persistent changes and possible non-stationarity. However, the theory of the bootstrap for such models has focused on deterministic changes of the unconditional variance and little is known about the performance and the validity of the bootstrap when the volatility is driven by a non-stationary stochastic process. This includes near-integrated exogenous volatility processes as well as near-integrated GARCH processes, where the conditional variance has a diffusion limit; a further important example is the case where volatility exhibits infrequent jumps. This paper fills this gap in the literature by developing conditions for bootstrap validity in time series and regression models with non-stationary, stochastic volatility. We show that in such cases the distribution of bootstrap statistics (conditional on the data) is random in the limit. Consequently, the conventional approaches to proofs of bootstrap consistency, based on the notion of weak convergence in probability of the bootstrap statistic, fail to deliver the required validity results. Instead, we use the concept of ‘weak convergence in distribution’ to develop and establish novel conditions for validity of the wild bootstrap, conditional on the volatility process. We apply our results to several testing problems in the presence of non-stationary stochastic volatility, including testing in a location model, testing for structural change using CUSUM-type functionals, and testing for a unit root in autoregressive models. Importantly, we work under sufficient conditions for bootstrap validity that include the absence of statistical leverage effects, i.e., correlation between the error process and its future conditional variance. The results of the paper are illustrated using Monte Carlo simulations, which indicate that a wild bootstrap approach leads to size control even in small samples.

KW - Bootstrap

KW - Non-stationary stochastic volatility

KW - Random limit measures

KW - Weak convergence in distribution

U2 - 10.1016/j.jeconom.2021.01.005

DO - 10.1016/j.jeconom.2021.01.005

M3 - Journal article

AN - SCOPUS:85101966378

VL - 224

JO - Journal of Econometrics

JF - Journal of Econometrics

SN - 0304-4076

IS - 1

ER -

ID: 258714670