El-Morshedy M, Altun Emrah, Eliwa M S
Department of Mathematics, College of Science and Humanities in Al-Kharj, Prince Sattam bin Abdulaziz University, Al-Kharj, 11942 Saudi Arabia.
Department of Mathematics, Faculty of Science, Mansoura University, Mansoura, 35516 Egypt.
Math Sci (Karaj). 2022;16(1):37-50. doi: 10.1007/s40096-021-00390-9. Epub 2021 Mar 16.
This study proposes new statistical tools to analyze the counts of the daily coronavirus cases and deaths. Since the daily new deaths exhibit highly over-dispersion, we introduce a new two-parameter discrete distribution, called , which enables us to model all kinds of dispersion such as under-, equi-, and over-dispersion. Additionally, we introduce a new count regression model based on the proposed distribution to investigate the effects of the important risk factors on the counts of deaths for OECD countries. Three data sets are analyzed with proposed models and competitive models. Empirical findings show that air pollution, the proportion of obesity, and smokers in a population do not affect the counts of deaths for OECD countries. The interesting empirical result is that the countries with having higher alcohol consumption have lower counts of deaths.
本研究提出了新的统计工具来分析每日新冠病毒病例和死亡人数。由于每日新增死亡人数呈现出高度的过度离散性,我们引入了一种新的双参数离散分布,称为 ,它使我们能够对各种离散情况进行建模,如欠离散、等离散和过度离散。此外,我们基于所提出的分布引入了一种新的计数回归模型,以研究重要风险因素对经合组织国家死亡人数的影响。使用所提出的模型和竞争模型对三个数据集进行了分析。实证结果表明,空气污染、肥胖比例和人口中的吸烟者数量对经合组织国家的死亡人数没有影响。有趣的实证结果是,酒精消费量较高的国家死亡人数较少。