Analyzing the effect of duration on the daily new cases of COVID-19 infections and deaths using bivariate Poisson regression: A marginal conditional approach

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Abstract

The whole world is devastated by the impact of the COVID-19 pandemic. The socioeconomic and other effects of COVID-19 on people are visible in all echelons of society. The main goal of countries is to stop the spreading of this pandemic by reducing the COVID-19 related new cases and deaths. In this paper, we analyzed the correlated count outcomes, daily new cases, and fatalities, and assessed the impact of some covariates by adopting a generalized bivariate Poisson model. There are different effects of duration on new cases and deaths in different countries. Also, the regional variation found to be different, and population density has a significant impact on outcomes.

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Chowdhury, R., Sneddon, G., & Hasan, M. T. (2020). Analyzing the effect of duration on the daily new cases of COVID-19 infections and deaths using bivariate Poisson regression: A marginal conditional approach. Mathematical Biosciences and Engineering, 17(5), 6085–6097. https://doi.org/10.3934/MBE.2020323

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