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Interpretable vector autoregressions with exogenous time series

Boekbijdrage - Boekhoofdstuk Conferentiebijdrage

The Vector AutoRegressive (VAR) model is fundamental to the study of multivariate time series. Although VAR models are intensively investigated by many researchers, practitioners often show more interest in analyzing VARX models that incorporate the impact of unmodeled exogenous variables (X) into the VAR. However, since the parameter space grows quadratically with the number of time series, estimation quickly becomes challenging. While several proposals havebeen made to sparsely estimate large VAR models, the estimation of large VARX models is under-explored. Moreover, typically these sparse proposals involve alasso-type penalty and do not incorporate lag selection into the estimation procedure. As a consequence, the resulting models may be difficult to interpret. In thispaper, we propose a lag-based hierarchically sparse estimator, called "HVARX", for large VARX models. We illustrate the usefulness of HVARX on a cross-categorymanagement marketing application. Our results show how it provides a highly interpretable model, and improves out-of-sample forecast accuracy compared to a lasso-type approach
Boek: Proceedings of NIPS 2017 Symposium on Interpretable Machine Learning
Pagina's: 1 - 5
Aantal pagina's: 5
ISBN:978-1510860964
Jaar van publicatie:2017