Real-time forecasting of German GDP based on a large factor model with monthly and quarterly data
Schumacher, C., Breitung, J.
Pages 386-398
AbstractThis paper discusses a factor model for short-term forecasting of GDP
growth using a large number of monthly and quarterly time series in
real-time. To take into account the different periodicities of the data and
missing observations at the end of the sample, the factors are estimated by
applying an EM algorithm, combined with a principal components estimator.
We discuss some in-sample properties of the estimator in a real-time
environment and propose alternative methods for forecasting quarterly GDP
with monthly factors. In the empirical application, we use a novel
real-time dataset for the German economy. Employing a recursive forecast
experiment, we evaluate the forecast accuracy of the factor model with
respect to German GDP. Furthermore, we investigate the role of revisions in
forecast accuracy and assess the contribution of timely monthly
observations to the forecast performance. Finally, we compare the
performance of the mixed-frequency model with that of a factor model, based
on time-aggregated quarterly data.
Keywords: E37, C53, Forecasting, GDP, EM algorithm, Principal components, Factor models