Journal of Physics: Complexity (Jan 2024)

Identifying key products to trigger new exports: an explainable machine learning approach

  • Massimiliano Fessina,
  • Giambattista Albora,
  • Andrea Tacchella,
  • Andrea Zaccaria

DOI
https://doi.org/10.1088/2632-072X/ad3604
Journal volume & issue
Vol. 5, no. 2
p. 025003

Abstract

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Tree-based machine learning algorithms provide the most precise assessment of the feasibility for a country to export a target product given its export basket. However, the high number of parameters involved prevents a straightforward interpretation of the results and, in turn, the explainability of policy indications. In this paper, we propose a procedure to statistically validate the importance of the products used in the feasibility assessment. In this way, we are able to identify which products, called explainers , significantly increase the probability to export a target product in the near future. The explainers naturally identify a low dimensional representation, the Feature Importance Product Space, that enhances the interpretability of the recommendations and provides out-of-sample forecasts of the export baskets of countries. Interestingly, we detect a positive correlation between the complexity of a product and the complexity of its explainers .

Keywords