Sparse structures with LASSO through Principal Components: forecasting GDP components in the short-run
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- Simplice A. Asongu & Thales P. Yapatake Kossele & Joseph Nnanna, 2021. "Not all that glitters is gold: political stability and trade in Sub-Saharan Africa," Working Papers of the African Governance and Development Institute. 21/005, African Governance and Development Institute..
- Simplice A. Asongu & Thales P. Yapatake Kossele & Joseph Nnanna, 2021. "Not all that glitters is gold: political stability and trade in Sub-Saharan Africa," Working Papers 21/005, European Xtramile Centre of African Studies (EXCAS).
- Maiorova, Ksenia & Fokin, Nikita, 2020. "Наукастинг Темпов Роста Стоимостных Объемов Экспорта И Импорта По Товарным Группам [Nowcasting the growth rates of the export and import by commodity groups]," MPRA Paper 109557, University Library of Munich, Germany.
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This paper has been announced in the following NEP Reports:- NEP-FOR-2019-06-17 (Forecasting)
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