Machine Learning Time Series Regressions With an Application to Nowcasting

This article introduces structured machine learning regressions for high-dimensional time series data potentially sampled at different frequencies. The sparse-group LASSO estimator can take advantage of such time series data structures and outperforms the unstructured LASSO. We establish oracle ineq...

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Veröffentlicht in:Journal of business & economic statistics 2022-06, Vol.40 (3), p.1094-1106
Hauptverfasser: Babii, Andrii, Ghysels, Eric, Striaukas, Jonas
Format: Artikel
Sprache:eng
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Zusammenfassung:This article introduces structured machine learning regressions for high-dimensional time series data potentially sampled at different frequencies. The sparse-group LASSO estimator can take advantage of such time series data structures and outperforms the unstructured LASSO. We establish oracle inequalities for the sparse-group LASSO estimator within a framework that allows for the mixing processes and recognizes that the financial and the macroeconomic data may have heavier than exponential tails. An empirical application to nowcasting US GDP growth indicates that the estimator performs favorably compared to other alternatives and that text data can be a useful addition to more traditional numerical data. Our methodology is implemented in the R package midasml, available from CRAN.
ISSN:0735-0015
1537-2707
DOI:10.1080/07350015.2021.1899933