Volume 20 Issue 2 (April-June 2004)

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Forecasting Economic and Financial Time Series Using Nonlinear Methods
edited by Michael P. Clements, Philip Hans Franses, and Norman R. Swanson

Forecasting threshold cointegrated systems

De Gooijer, J.G., Vidiella-i-Anguera, A.
Pages 237-253
Abstract

The cointegration literature suggests that forecast errors may be reduced by incorporating the knowledge of cointegrating relationships into linear models to generate forecasts. We show that the long-term (one- to sixty-steps ahead) forecasting performance can further be enhanced by applying nonlinear equilibrium correction models. In particular, we focus on a bivariate threshold vector equilibrium correction model with the same unknown cointegrating parameter vector in both regimes (TVECM), and a bivariate cointegration model with regime-specific cointegration vectors (LTVECM). Based on simulation experiments as well as two real data sets, and using a variety of evaluation measures, we find that the forecasting performance of the LTVECM outperforms the TVECM and the usual linear specification of the equilibrium correcting mechanism. This result holds for forecasts generated by bootstrapping and Monte Carlo simulation.

Keywords: Cointegration, Forecasting performance, Maximum likelihood, Multivariate forecast densities, Vector equilibrium correction model
FULL TEXT LINK
http://dx.doi.org/10.1016/j.ijforecast.2003.09.006
ONLINE SUPPLEMENTS
data and code (Zip file, 04-20-2-DeGooijer.zip)
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