Machine Learning Algorithm for Mid-Term Projection of the EU Member States’ Indebtedness

Author:

Zarkova Silvia1ORCID,Kostov Dimitar1,Angelov Petko1ORCID,Pavlov Tsvetan1ORCID,Zahariev Andrey1ORCID

Affiliation:

1. Department of Finance and Credit, Tsenov Academy of Economics, 5250 Svishtov, Bulgaria

Abstract

The main research question addressed in the paper is related to the possibility of medium-term forecasting of the public debts of the EU member states. The analysis focuses on a broad range of indicators (macroeconomic, fiscal, monetary, global, and convergence) that influence the public debt levels of the EU member states. A machine learning prediction model using random forest regression was approbated with the empirical data. The algorithm was applied in two iterations—a primary iteration with 33 indicators and a secondary iteration with the 8 most significant indicators in terms of their influence and forecasting importance regarding the development of public debt across the EU. The research identifies a change in the medium term (2023–2024) in the group of the four most indebted EU member states, viz., that Spain will be replaced by France, which is an even more systemic economy, and will thus increase the group’s share of the EU’s GDP. The results indicate a logical scenario of rising interest rates with adverse effects for the fiscal imbalances, which will require serious reforms in the public sector of the most indebted EU member states.

Funder

Academic Foundation “Professor Minko Rusenov, PhD”

Institute for Scientific Research of “D. A. Tsenov” Academy of Economics

Publisher

MDPI AG

Subject

Strategy and Management,Economics, Econometrics and Finance (miscellaneous),Accounting

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