Keywords and phrases: COVID-19, supply chain, inflation, unemployment, machine learning, deep learning, LSTM, XGBoost.
Received: July 15, 2023; Revised: November 15, 2023; Accepted: November 18, 2023; Published: November 21, 2023
How to cite this article: Rolando Santos and Brian W. Sloboda, Economic recovery after COVID-19: an assessment of selected G20 countries, Advances and Applications in Statistics 90(2) (2023), 207-224. http://dx.doi.org/10.17654/0972361723070
This Open Access Article is Licensed under Creative Commons Attribution 4.0 International License
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