Bootstrap VAR forecasts: The effect of model uncertainties
Author
Fresoli, Diego Eduardo
Entity
UAM. Departamento de Análisis Económico: Economía CuantitativaPublisher
WileyDate
2021-08-17Citation
10.1002/for.2809
Journal of Forecasting 41.2 (2021): 279-293
ISSN
1099-131XDOI
10.1002/for.2809Funded by
This article has been funded by PID2019-108079GB-C22/AEI/10.13039/501100011033Project
Gobierno de España. PID2019-108079GBEditor's Version
https://doi.org/10.1002/for.2809Subjects
bias correction; error distribution uncertainty; forecast region; lag order uncertainty; parameter uncertainty; resampling methods; VAR forecasts; EconomíaRights
© 2021 The AuthorAbstract
VAR models are popular to forecast macroeconomic time series. However, the model, the parameters, and the error distribution are rarely known without uncertainty, so bootstrap methods are applied to deal with these sources of uncertainties. In this paper, the performance of the popular forecast Bonferroni cubes based on the Gaussian method and variants of the bootstrap procedure that incorporate error distribution, parameter uncertainty, bias correction, and lag order uncertainty are compared. Monte Carlo simulations suggest that the best performance of bootstrap cubes are obtained when the parameter uncertainty is considered, being the bias and model uncertainties important for long-run forecast regions in persistent VAR models. Similar conclusions are found in an empirical application based on a four variate system containing US monthly percent changes of the industrial production index, the S&P500 stock market index, its dividend yield, and the unemployment rate
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