Bootstrap Determination of the Co-Integration Rank in Heteroskedastic VAR Models

Publikation: Working paperForskning

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Bootstrap Determination of the Co-Integration Rank in Heteroskedastic VAR Models. / Cavaliere , Giuseppe ; Rahbek, Anders; Taylor , A. M. Robert .

Department of Economics, University of Copenhagen, 2012.

Publikation: Working paperForskning

Harvard

Cavaliere , G, Rahbek, A & Taylor , AMR 2012 'Bootstrap Determination of the Co-Integration Rank in Heteroskedastic VAR Models' Department of Economics, University of Copenhagen. <http://papers.ssrn.com/sol3/papers.cfm?abstract_id=2141220>

APA

Cavaliere , G., Rahbek, A., & Taylor , A. M. R. (2012). Bootstrap Determination of the Co-Integration Rank in Heteroskedastic VAR Models. Department of Economics, University of Copenhagen. University of Copenhagen. Institute of Economics. Discussion Papers (Online) Bind 12 Nr. 11 http://papers.ssrn.com/sol3/papers.cfm?abstract_id=2141220

Vancouver

Cavaliere G, Rahbek A, Taylor AMR. Bootstrap Determination of the Co-Integration Rank in Heteroskedastic VAR Models. Department of Economics, University of Copenhagen. 2012.

Author

Cavaliere , Giuseppe ; Rahbek, Anders ; Taylor , A. M. Robert . / Bootstrap Determination of the Co-Integration Rank in Heteroskedastic VAR Models. Department of Economics, University of Copenhagen, 2012. (University of Copenhagen. Institute of Economics. Discussion Papers (Online); Nr. 11, Bind 12).

Bibtex

@techreport{1ec77cbabb8c47898701a4548a77624d,
title = "Bootstrap Determination of the Co-Integration Rank in Heteroskedastic VAR Models",
abstract = "In a recent paper Cavaliere et al. (2012) develop bootstrap implementations of the (pseudo-) likelihood ratio [PLR] co-integration rank test and associated sequential rank determination procedure of Johansen (1996). The bootstrap samples are constructed using the restricted parameter estimates of the underlying VAR model which obtain under the reduced rank null hypothesis. They propose methods based on an i.i.d. bootstrap re-sampling scheme and establish the validity of their proposed bootstrap procedures in the context of a co-integrated VAR model with i.i.d. innovations. In this paper we investigate the properties of their bootstrap procedures, together with analogous procedures based on a wild bootstrap re-sampling scheme, when time-varying behaviour is present in either the conditional or unconditional variance of the innovations. We show that the bootstrap PLR tests are asymptotically correctly sized and, moreover, that the probability that the associated bootstrap sequential procedures select a rank smaller than the true rank converges to zero. This result is shown to hold for both the i.i.d. and wild bootstrap variants under conditional heteroskedasticity but only for the latter under unconditional heteroskedasticity. Monte Carlo evidence is reported which suggests that the bootstrap approach of Cavaliere et al. (2012) significantly improves upon the nite sample performance of corresponding procedures based on either the asymptotic PLR test or an alternative bootstrap method (where the short run dynamics in the VAR model are estimated unrestrictedly) for a variety of conditionally and unconditionally heteroskedastic innovation processes",
keywords = "Faculty of Social Sciences, Bootstrap, Co-integration, Trace statistic;, Rank determination, heteroskedasticity",
author = "Giuseppe Cavaliere and Anders Rahbek and Taylor, {A. M. Robert}",
note = "JEL Classification: C30, C32 ",
year = "2012",
language = "English",
series = "University of Copenhagen. Institute of Economics. Discussion Papers (Online)",
number = "11",
publisher = "Department of Economics, University of Copenhagen",
address = "Denmark",
type = "WorkingPaper",
institution = "Department of Economics, University of Copenhagen",

}

RIS

TY - UNPB

T1 - Bootstrap Determination of the Co-Integration Rank in Heteroskedastic VAR Models

AU - Cavaliere , Giuseppe

AU - Rahbek, Anders

AU - Taylor , A. M. Robert

N1 - JEL Classification: C30, C32

PY - 2012

Y1 - 2012

N2 - In a recent paper Cavaliere et al. (2012) develop bootstrap implementations of the (pseudo-) likelihood ratio [PLR] co-integration rank test and associated sequential rank determination procedure of Johansen (1996). The bootstrap samples are constructed using the restricted parameter estimates of the underlying VAR model which obtain under the reduced rank null hypothesis. They propose methods based on an i.i.d. bootstrap re-sampling scheme and establish the validity of their proposed bootstrap procedures in the context of a co-integrated VAR model with i.i.d. innovations. In this paper we investigate the properties of their bootstrap procedures, together with analogous procedures based on a wild bootstrap re-sampling scheme, when time-varying behaviour is present in either the conditional or unconditional variance of the innovations. We show that the bootstrap PLR tests are asymptotically correctly sized and, moreover, that the probability that the associated bootstrap sequential procedures select a rank smaller than the true rank converges to zero. This result is shown to hold for both the i.i.d. and wild bootstrap variants under conditional heteroskedasticity but only for the latter under unconditional heteroskedasticity. Monte Carlo evidence is reported which suggests that the bootstrap approach of Cavaliere et al. (2012) significantly improves upon the nite sample performance of corresponding procedures based on either the asymptotic PLR test or an alternative bootstrap method (where the short run dynamics in the VAR model are estimated unrestrictedly) for a variety of conditionally and unconditionally heteroskedastic innovation processes

AB - In a recent paper Cavaliere et al. (2012) develop bootstrap implementations of the (pseudo-) likelihood ratio [PLR] co-integration rank test and associated sequential rank determination procedure of Johansen (1996). The bootstrap samples are constructed using the restricted parameter estimates of the underlying VAR model which obtain under the reduced rank null hypothesis. They propose methods based on an i.i.d. bootstrap re-sampling scheme and establish the validity of their proposed bootstrap procedures in the context of a co-integrated VAR model with i.i.d. innovations. In this paper we investigate the properties of their bootstrap procedures, together with analogous procedures based on a wild bootstrap re-sampling scheme, when time-varying behaviour is present in either the conditional or unconditional variance of the innovations. We show that the bootstrap PLR tests are asymptotically correctly sized and, moreover, that the probability that the associated bootstrap sequential procedures select a rank smaller than the true rank converges to zero. This result is shown to hold for both the i.i.d. and wild bootstrap variants under conditional heteroskedasticity but only for the latter under unconditional heteroskedasticity. Monte Carlo evidence is reported which suggests that the bootstrap approach of Cavaliere et al. (2012) significantly improves upon the nite sample performance of corresponding procedures based on either the asymptotic PLR test or an alternative bootstrap method (where the short run dynamics in the VAR model are estimated unrestrictedly) for a variety of conditionally and unconditionally heteroskedastic innovation processes

KW - Faculty of Social Sciences

KW - Bootstrap

KW - Co-integration

KW - Trace statistic;

KW - Rank determination

KW - heteroskedasticity

M3 - Working paper

T3 - University of Copenhagen. Institute of Economics. Discussion Papers (Online)

BT - Bootstrap Determination of the Co-Integration Rank in Heteroskedastic VAR Models

PB - Department of Economics, University of Copenhagen

ER -

ID: 40585727