Cointegration rank testing under conditional heteroskedasticity

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Cointegration rank testing under conditional heteroskedasticity. / Cavaliere, Giuseppe; Rahbek, Anders Christian; Taylor, Robert M.

I: Econometric Theory, Bind 26, Nr. 6, 2010, s. 1719-1760.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Cavaliere, G, Rahbek, AC & Taylor, RM 2010, 'Cointegration rank testing under conditional heteroskedasticity', Econometric Theory, bind 26, nr. 6, s. 1719-1760. https://doi.org/10.1017/S0266466609990776

APA

Cavaliere, G., Rahbek, A. C., & Taylor, R. M. (2010). Cointegration rank testing under conditional heteroskedasticity. Econometric Theory, 26(6), 1719-1760. https://doi.org/10.1017/S0266466609990776

Vancouver

Cavaliere G, Rahbek AC, Taylor RM. Cointegration rank testing under conditional heteroskedasticity. Econometric Theory. 2010;26(6):1719-1760. https://doi.org/10.1017/S0266466609990776

Author

Cavaliere, Giuseppe ; Rahbek, Anders Christian ; Taylor, Robert M. / Cointegration rank testing under conditional heteroskedasticity. I: Econometric Theory. 2010 ; Bind 26, Nr. 6. s. 1719-1760.

Bibtex

@article{f35ee0b0c53a11debda0000ea68e967b,
title = "Cointegration rank testing under conditional heteroskedasticity",
abstract = "We analyze the properties of the conventional Gaussian-based cointegrating rank tests of Johansen (1996, Likelihood-Based Inference in Cointegrated Vector Autoregressive Models) in the case where the vector of series under test is driven by globally stationary, conditionally heteroskedastic (martingale difference) innovations. We first demonstrate that the limiting null distributions of the rank statistics coincide with those derived by previous authors who assume either independent and identically distributed (i.i.d.) or (strict and covariance) stationary martingale difference innovations. We then propose wild bootstrap implementations of the cointegrating rank tests and demonstrate that the associated bootstrap rank statistics replicate the first-order asymptotic null distributions of the rank statistics. We show that the same is also true of the corresponding rank tests based on the i.i.d. bootstrap of Swensen (2006, Econometrica 74, 1699-1714). The wild bootstrap, however, has the important property that, unlike the i.i.d. bootstrap, it preserves in the resampled data the pattern of heteroskedasticity present in the original shocks. Consistent with this, numerical evidence suggests that, relative to tests based on the asymptotic critical values or the i.i.d. bootstrap, the wild bootstrap rank tests perform very well in small samples under a variety of conditionally heteroskedastic innovation processes. An empirical application to the term structure of interest rates is given.",
author = "Giuseppe Cavaliere and Rahbek, {Anders Christian} and Taylor, {Robert M.}",
year = "2010",
doi = "10.1017/S0266466609990776",
language = "English",
volume = "26",
pages = "1719--1760",
journal = "Econometric Theory",
issn = "0266-4666",
publisher = "Cambridge University Press",
number = "6",

}

RIS

TY - JOUR

T1 - Cointegration rank testing under conditional heteroskedasticity

AU - Cavaliere, Giuseppe

AU - Rahbek, Anders Christian

AU - Taylor, Robert M.

PY - 2010

Y1 - 2010

N2 - We analyze the properties of the conventional Gaussian-based cointegrating rank tests of Johansen (1996, Likelihood-Based Inference in Cointegrated Vector Autoregressive Models) in the case where the vector of series under test is driven by globally stationary, conditionally heteroskedastic (martingale difference) innovations. We first demonstrate that the limiting null distributions of the rank statistics coincide with those derived by previous authors who assume either independent and identically distributed (i.i.d.) or (strict and covariance) stationary martingale difference innovations. We then propose wild bootstrap implementations of the cointegrating rank tests and demonstrate that the associated bootstrap rank statistics replicate the first-order asymptotic null distributions of the rank statistics. We show that the same is also true of the corresponding rank tests based on the i.i.d. bootstrap of Swensen (2006, Econometrica 74, 1699-1714). The wild bootstrap, however, has the important property that, unlike the i.i.d. bootstrap, it preserves in the resampled data the pattern of heteroskedasticity present in the original shocks. Consistent with this, numerical evidence suggests that, relative to tests based on the asymptotic critical values or the i.i.d. bootstrap, the wild bootstrap rank tests perform very well in small samples under a variety of conditionally heteroskedastic innovation processes. An empirical application to the term structure of interest rates is given.

AB - We analyze the properties of the conventional Gaussian-based cointegrating rank tests of Johansen (1996, Likelihood-Based Inference in Cointegrated Vector Autoregressive Models) in the case where the vector of series under test is driven by globally stationary, conditionally heteroskedastic (martingale difference) innovations. We first demonstrate that the limiting null distributions of the rank statistics coincide with those derived by previous authors who assume either independent and identically distributed (i.i.d.) or (strict and covariance) stationary martingale difference innovations. We then propose wild bootstrap implementations of the cointegrating rank tests and demonstrate that the associated bootstrap rank statistics replicate the first-order asymptotic null distributions of the rank statistics. We show that the same is also true of the corresponding rank tests based on the i.i.d. bootstrap of Swensen (2006, Econometrica 74, 1699-1714). The wild bootstrap, however, has the important property that, unlike the i.i.d. bootstrap, it preserves in the resampled data the pattern of heteroskedasticity present in the original shocks. Consistent with this, numerical evidence suggests that, relative to tests based on the asymptotic critical values or the i.i.d. bootstrap, the wild bootstrap rank tests perform very well in small samples under a variety of conditionally heteroskedastic innovation processes. An empirical application to the term structure of interest rates is given.

U2 - 10.1017/S0266466609990776

DO - 10.1017/S0266466609990776

M3 - Journal article

VL - 26

SP - 1719

EP - 1760

JO - Econometric Theory

JF - Econometric Theory

SN - 0266-4666

IS - 6

ER -

ID: 15456831