October 4, 2022
DOI: 10.34932/01mq-sn15
Forecasting World Trade Using Big Data and Machine Learning Techniques
We compare machine learning techniques to a large Bayesian VAR for nowcasting and forecasting world merchandise trade. We focus on how the predictive performance of the machine learning models changes when they have access to a big dataset with 11,017 data series on key
economic indicators. The machine learning techniques used include lasso, random forest and linear ensembles.
We additionally compare the accuracy of the forecasts during and outside the Great Financial Crisis. We find no statistically significant differences in forecasting accuracy whether with respect to the technique, the dataset used - small or big - or the time period.
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Authors
Andrei Dubovik
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