Forecasting Vector ARMA Processes With Systematically Missing Observations |
| |
Authors: | Helmut Lütkepohl |
| |
Affiliation: | Institut für Statistik und ?konometrie, Universitat Hamburg , Von-Melle-Park 5, 2000 Hamburg 13, West Germany |
| |
Abstract: | ![]() The following two predictors are compared for time series with systematically missing observations: (a) A time series model is fitted to the full series Xt , and forecasts are based on this model, (b) A time series model is fitted to the series with systematically missing observations Y τ, and forecasts are based on the resulting model. If the data generation processes are known vector autoregressive moving average (ARMA) processes, the first predictor is at least as efficient as the second one in a mean squared error sense. Conditions are given for the two predictors to be identical. If only the ARMA orders of the generation processes are known and the coefficients are estimated, or if the process orders and coefficients are estimated, the first predictor is again, in general, superior. There are, however, exceptions in which the second predictor, using seemingly less information, may be better. These results are discussed, using both asymptotic theory and small sample simulations. Some economic time series are used as illustrative examples. |
| |
Keywords: | Aggregation of stock variables Model specification Multiple time series Forecast mean squared error Forecast efficiency |
|
|