An Algorithmic Crystal Ball : Forecasts-based on Machine Learning /
Forecasting macroeconomic variables is key to developing a view on a country's economic outlook. Most traditional forecasting models rely on fitting data to a pre-specified relationship between input and output variables, thereby assuming a specific functional and stochastic process underlying...
| Autor principal: | |
|---|---|
| Altres autors: | , |
| Format: | Revista |
| Idioma: | English |
| Publicat: |
Washington, D.C. :
International Monetary Fund,
2018.
|
| Col·lecció: | IMF Working Papers; Working Paper ;
No. 2018/230 |
| Matèries: | |
| Accés en línia: | Full text available on IMF |
| Sumari: | Forecasting macroeconomic variables is key to developing a view on a country's economic outlook. Most traditional forecasting models rely on fitting data to a pre-specified relationship between input and output variables, thereby assuming a specific functional and stochastic process underlying that process. We pursue a new approach to forecasting by employing a number of machine learning algorithms, a method that is data driven, and imposing limited restrictions on the nature of the true relationship between input and output variables. We apply the Elastic Net, SuperLearner, and Recurring Neural Network algorithms on macro data of seven, broadly representative, advanced and emerging economies and find that these algorithms can outperform traditional statistical models, thereby offering a relevant addition to the field of economic forecasting. |
|---|---|
| Descripció de l’ítem: | <strong>Off-Campus Access:</strong> No User ID or Password Required <strong>On-Campus Access:</strong> No User ID or Password Required |
| Descripció física: | 1 online resource (34 pages) |
| Format: | Mode of access: Internet |
| ISSN: | 1018-5941 |
| Accés: | Electronic access restricted to authorized BRAC University faculty, staff and students |