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Published in: Empirical Economics 2/2023

09-01-2023

Forecasting GDP with many predictors in a small open economy: forecast or information pooling?

Authors: Hwee Kwan Chow, Yijie Fei, Daniel Han

Published in: Empirical Economics | Issue 2/2023

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Abstract

This study compares two distinct approaches, pooling forecasts from single indicator MIDAS models versus pooling information from indicators into factor MIDAS models, for short-term Singapore GDP growth forecasting with a large ragged-edge mixed frequency dataset. We consider various popular weighting schemes in the literature when conducting forecast pooling. As for factor extraction, both the conventional dynamic factor model and the three-pass regression filter approach are considered. We investigate the relative predictive performance of all methods in a pseudo-out-of-sample forecasting exercise from 2007Q4 to 2020Q3. In the stable growth non-crisis period, no substantial difference in predictive performance is found across forecast models. In comparison, we find information pooling tends to dominate both the quarterly autoregressive benchmark model and the forecast pooling strategy particularly during the Global Financial Crisis.

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Appendix
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Metadata
Title
Forecasting GDP with many predictors in a small open economy: forecast or information pooling?
Authors
Hwee Kwan Chow
Yijie Fei
Daniel Han
Publication date
09-01-2023
Publisher
Springer Berlin Heidelberg
Published in
Empirical Economics / Issue 2/2023
Print ISSN: 0377-7332
Electronic ISSN: 1435-8921
DOI
https://doi.org/10.1007/s00181-022-02356-9

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