Dying together: A convergence analysis of fatalities during COVID-19

J Econ Asymmetries. 2023 Nov:28:e00315. doi: 10.1016/j.jeca.2023.e00315. Epub 2023 May 29.

Abstract

Governments implemented countermeasures to mitigate the spread of the COVID-19 virus. This had a severe effect on the economy. We examine convergence patterns in the evolution of COVID-19 deaths across countries. We aim to investigate whether countries that implemented different measures managed to limit the number of COVID-19 deaths. We extend the most recent macro-growth convergence methodology to examine convergence of COVID-19 deaths. We combine a long memory stationarity framework with the maximal clique algorithm. This provides a rich and flexible club formation strategy that goes beyond the stationary/non stationary approach adopted in the previous literature. Our results suggest that strict measures (even belated) or an aggressive vaccination scheme can confine the spread of the disease while maintaining the strictness of the measures steady can lead to a burst of the virus. Finally, we observe that fiscal measures did not have an effect on the containment of the virus.

Keywords: COVID-19; Convergence; Convergence clubs; Long memory; Maximal clique algorithm; Pair-wise approach.