Testing for Co-integration in Vector Autoregressions with Non-Stationary Volatility

Research output: Working paperResearch

Standard

Testing for Co-integration in Vector Autoregressions with Non-Stationary Volatility. / Cavaliere, Giuseppe; Rahbek, Anders Christian; Taylor, A. M. Robert.

Department of Economics, University of Copenhagen, 2008.

Research output: Working paperResearch

Harvard

Cavaliere, G, Rahbek, AC & Taylor, AMR 2008 'Testing for Co-integration in Vector Autoregressions with Non-Stationary Volatility' Department of Economics, University of Copenhagen.

APA

Cavaliere, G., Rahbek, A. C., & Taylor, A. M. R. (2008). Testing for Co-integration in Vector Autoregressions with Non-Stationary Volatility. Department of Economics, University of Copenhagen.

Vancouver

Cavaliere G, Rahbek AC, Taylor AMR. Testing for Co-integration in Vector Autoregressions with Non-Stationary Volatility. Department of Economics, University of Copenhagen. 2008.

Author

Cavaliere, Giuseppe ; Rahbek, Anders Christian ; Taylor, A. M. Robert. / Testing for Co-integration in Vector Autoregressions with Non-Stationary Volatility. Department of Economics, University of Copenhagen, 2008.

Bibtex

@techreport{de08ebc0db0c11dd9473000ea68e967b,
title = "Testing for Co-integration in Vector Autoregressions with Non-Stationary Volatility",
abstract = "Many key macro-economic and …nancial variables are characterised by permanent changes in unconditional volatility. In this paper we analyse vector autoregressions with non-stationary (unconditional) volatility of a very general form, which includes single and multiple volatility breaks as special cases. We show that the conventional rank statistics computed as in Johansen (1988,1991) are potentially unreliable. In particular, their large sample distributions depend on the integrated covariation of the underlying multivariate volatility process which impacts on both the size and power of the associated co-integration tests, as we demonstrate numerically. A solution to the identi…ed inference problem is provided by considering wild bootstrap-based implementations of the rank tests. These do not require the practitioner to specify a parametric model for volatility, nor to assume that the pattern of volatility is common to, or independent across, the vector of series under analysis. The bootstrap is shown to perform very well in practice.",
keywords = "Faculty of Social Sciences, trace and maximum eigenvalue tests, wild bootstrap",
author = "Giuseppe Cavaliere and Rahbek, {Anders Christian} and Taylor, {A. M. Robert}",
note = "JEL classification: C30, C32",
year = "2008",
language = "English",
publisher = "Department of Economics, University of Copenhagen",
address = "Denmark",
type = "WorkingPaper",
institution = "Department of Economics, University of Copenhagen",

}

RIS

TY - UNPB

T1 - Testing for Co-integration in Vector Autoregressions with Non-Stationary Volatility

AU - Cavaliere, Giuseppe

AU - Rahbek, Anders Christian

AU - Taylor, A. M. Robert

N1 - JEL classification: C30, C32

PY - 2008

Y1 - 2008

N2 - Many key macro-economic and …nancial variables are characterised by permanent changes in unconditional volatility. In this paper we analyse vector autoregressions with non-stationary (unconditional) volatility of a very general form, which includes single and multiple volatility breaks as special cases. We show that the conventional rank statistics computed as in Johansen (1988,1991) are potentially unreliable. In particular, their large sample distributions depend on the integrated covariation of the underlying multivariate volatility process which impacts on both the size and power of the associated co-integration tests, as we demonstrate numerically. A solution to the identi…ed inference problem is provided by considering wild bootstrap-based implementations of the rank tests. These do not require the practitioner to specify a parametric model for volatility, nor to assume that the pattern of volatility is common to, or independent across, the vector of series under analysis. The bootstrap is shown to perform very well in practice.

AB - Many key macro-economic and …nancial variables are characterised by permanent changes in unconditional volatility. In this paper we analyse vector autoregressions with non-stationary (unconditional) volatility of a very general form, which includes single and multiple volatility breaks as special cases. We show that the conventional rank statistics computed as in Johansen (1988,1991) are potentially unreliable. In particular, their large sample distributions depend on the integrated covariation of the underlying multivariate volatility process which impacts on both the size and power of the associated co-integration tests, as we demonstrate numerically. A solution to the identi…ed inference problem is provided by considering wild bootstrap-based implementations of the rank tests. These do not require the practitioner to specify a parametric model for volatility, nor to assume that the pattern of volatility is common to, or independent across, the vector of series under analysis. The bootstrap is shown to perform very well in practice.

KW - Faculty of Social Sciences

KW - trace and maximum eigenvalue tests

KW - wild bootstrap

M3 - Working paper

BT - Testing for Co-integration in Vector Autoregressions with Non-Stationary Volatility

PB - Department of Economics, University of Copenhagen

ER -

ID: 9508846