We conduct an out-of-sample backtesting exercise of Growth-at-Risk (GaR) predictions for 24 OECD countries. We consider forecasts constructed from quantile regression and GARCH models. The quantile regression forecasts are based on a set of recently proposed measures of downside risks to GDP, including the national financial conditions index. The backtesting results show that quantile regression and GARCH forecasts have a similar performance. If anything, our evidence suggests that standard volatility models such as the GARCH(1,1) are more accurate.
Brownlees, Christian-Timothy; Souza, A. B. M.. (2021). Backtesting global Growth-at-Risk. JOURNAL OF MONETARY ECONOMICS, (ISSN: 0304-3932), 118: 312-330. Doi: 10.1016/j.jmoneco.2020.11.003.
Backtesting global Growth-at-Risk
Brownlees C.
;
2021
Abstract
We conduct an out-of-sample backtesting exercise of Growth-at-Risk (GaR) predictions for 24 OECD countries. We consider forecasts constructed from quantile regression and GARCH models. The quantile regression forecasts are based on a set of recently proposed measures of downside risks to GDP, including the national financial conditions index. The backtesting results show that quantile regression and GARCH forecasts have a similar performance. If anything, our evidence suggests that standard volatility models such as the GARCH(1,1) are more accurate.| File | Dimensione | Formato | |
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