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- W4289550768 abstract "This paper constructs an aligned global economic policy uncertainty (GEPU) index based on a modified machine learning approach. We find that the aligned GEPU index is an informative predictor for forecasting crude oil market volatility both in- and out-of-sample. Compared to general GEPU indices without supervised learning, well-recognized economic variables, and other popular uncertainty indicators, the aligned GEPU index is rather powerful and can provide preponderant or complementary information. The trading strategy based on the aligned GEPU index can also generate sizable economic gains. The statistical source of the aligned GEPU index’s predictive power is that it can learn both the magnitude and sign of national EPU variables’ predictive ability and thus yields reasonable and informative loadings. On the other hand, the economic driving force probably stems from the ability for forecasting the shocks of oil-related fundamentals." @default.
- W4289550768 created "2022-08-03" @default.
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- W4289550768 date "2023-07-01" @default.
- W4289550768 modified "2023-10-18" @default.
- W4289550768 title "Global economic policy uncertainty aligned: An informative predictor for crude oil market volatility" @default.
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- W4289550768 doi "https://doi.org/10.1016/j.ijforecast.2022.07.002" @default.
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