Article ID: | iaor2017807 |
Volume: | 36 |
Issue: | 3 |
Start Page Number: | 305 |
End Page Number: | 324 |
Publication Date: | Apr 2017 |
Journal: | Journal of Forecasting |
Authors: | Costantini Mauro, Gunter Ulrich, M. Kunst Robert |
Keywords: | simulation, statistics: regression, programming: dynamic, stochastic processes |
We explore the benefits of forecast combinations based on forecast‐encompassing tests compared to simple averages and to Bates–Granger combinations. We also consider a new combination algorithm that fuses test‐based and Bates–Granger weighting. For a realistic simulation design, we generate multivariate time series samples from a macroeconomic DSGE‐VAR (dynamic stochastic general equilibrium–vector autoregressive) model. Results generally support Bates–Granger over uniform weighting, whereas benefits of test‐based weights depend on the sample size and on the prediction horizon. In a corresponding application to real‐world data, simple averaging performs best. Uniform averages may be the weighting scheme that is most robust to empirically observed irregularities.