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  1. Nowcasting world trade with machine learning
    a three-step approach
    Published: [2023]
    Publisher:  European Central Bank, Frankfurt am Main, Germany

    We nowcast world trade using machine learning, distinguishing between tree-based methods (random forest, gradient boosting) and their regression-based counterparts (macroeconomic random forest, linear gradient boosting). While much less used in the... more

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    ZBW - Leibniz-Informationszentrum Wirtschaft, Standort Kiel
    DS 534
    No inter-library loan

     

    We nowcast world trade using machine learning, distinguishing between tree-based methods (random forest, gradient boosting) and their regression-based counterparts (macroeconomic random forest, linear gradient boosting). While much less used in the literature, the latter are found to outperform not only the tree-based techniques, but also more "traditional" linear and non-linear techniques (OLS, Markov-switching, quantile regression). They do so significantly and consistently across different horizons and real-time datasets. To further improve performances when forecasting with machine learning, we propose a flexible three-step approach composed of (step 1) pre-selection, (step 2) factor extraction and (step 3) machine learning regression. We find that both pre-selection and factor extraction significantly improve the accuracy of machine-learning-based predictions. This three-step approach also outperforms workhorse benchmarks, such as a PCA-OLS model, an elastic net, or a dynamic factor model. Finally, on top of high accuracy, the approach is flexible and can be extended seamlessly beyond world trade.

     

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    Source: Union catalogues
    Language: English
    Media type: Ebook
    Format: Online
    ISBN: 9789289961219
    Other identifier:
    hdl: 10419/278668
    Series: Working paper series / European Central Bank ; no 2836
    Subjects: Wirtschaftsprognose; Internationale Wirtschaft; Prognoseverfahren; Künstliche Intelligenz; Data Mining; Big Data; Faktorenanalyse; Nowcasting; Forecasting; big data; large dataset; factor model; pre-selection
    Scope: 1 Online-Ressource (circa 51 Seiten), Illustrationen