Forecast accuracy of small and large scale dynamic factor models in developing economies Articles uri icon

authors

  • LOPEZ BUENACHE, GERMAN

publication date

  • August 2018

start page

  • E63

end page

  • E78

volume

  • 22

International Standard Serial Number (ISSN)

  • 1363-6669

Electronic International Standard Serial Number (EISSN)

  • 1467-9361

abstract

  • Developing economies usually present limitations in the availability of economic data. This constraint may affect the capacity of dynamic factor models to summarize large amounts of information into latent factors that reflect macroeconomic performance. This paper addresses this issue by comparing the accuracy of two kinds of dynamic factor models at GDP forecasting for six Latin American countries. Each model is based on a dataset of different dimensions: a large dataset composed of series belonging to several macroeconomic categories (large scale dynamic factor model) and a small dataset with a few prescreened variables considered as the most representative ones (small scale dynamic factor model). Short-term pseudo real time out-of-sample forecast of GDP growth is carried out with both models reproducing the real time situation of data accessibility derived from the publication lags of the series in each country. Results (i) confirm the important role of the inclusion of latest released data in the forecast accuracy of both models, (ii) show better precision of predictions based on factors with respect to autoregressive models and (iii) identify the most adequate model for each country according to availability of the observed data.