We analyze periodic and seasonal cointegration models for bivariate quarterly observed time series in an empirical forecasting study. We include both single equation and multiple equation methods. A VAR model in first differences with and without cointegration restrictions is also included in the analysis, where it serves as a benchmark. Our empirical results indicate that the VAR model in first differences without cointegration is best if one-step and four-step ahead forecasts are considered. For longer forecast horizons, however, the periodic and seasonal cointegration models are better. When comparing periodic versus seasonal cointegration models, we find that the seasonal cointegration models tend to yield better forecasts. Finally, there is no clear indication that multiple equation improve on single equation methods.

, ,
hdl.handle.net/1765/1638
Econometric Institute Research Papers
Erasmus School of Economics

Löf, M., & Franses, P. H. (2000). On forecasting cointegrated seasonal time series (No. EI 2000-04/A). Econometric Institute Research Papers. Retrieved from http://hdl.handle.net/1765/1638