Finite Sample Forecast Properties and Window Length Under Breaks in Cointegrated Systems
We show that extending the estimation window prior to structural breaks in cointegrated systems can be beneficial for forecasting performance and highlight under which conditions. In doing so, we generalize the Pesaran & Timmermann (2005)’s forecast error decomposition and show that it depends on four terms: 1) a period ahead risk; 2) a bias due to a conditional mean shift; 3) a bias due to a variance mismatch; 4) a gap term valid only conditionally. We also derive new expressionsfor the estimators of the adjustment matrix and a constant, which are auxiliary to the decomposition. Finally, we introduce new simulationbased estimators for the finite sample forecast properties which are based on the derived decomposition. Our finding points out that, insome cases, we can neglect parameter instability by extending the window backward and be insured against higher forecast risk under this model class as well, generalizing Pesaran & Timmermann (2005)’s result. Our result gives renewed importance to break tests, in order todistinguish cases when break-neglection is (not) appropriate