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Modeling COVID-19 Data with a Novel Extended Exponentiated Class of Distributions

Author

Listed:
  • Muhammad Arif
  • Dost Muhammad Khan
  • Muhammad Aamir
  • Umair Khalil
  • Rashad A. R. Bantan
  • Mohammed Elgarhy
  • Gul Rahmat

Abstract

The COVID-19 epidemic has affected every aspect of daily life since December 2019 and caused massive damage to the world. The coronavirus epidemic has affected more than 150 countries around the world. Many researchers have tried to develop a statistical model which can be utilized to analyze the behavior of the COVID-19 data. This article contributes to the field of probability theory by introducing a novel family of distributions, named the novel extended exponentiated class of distributions. Explicit expressions for numerous mathematical characterizations of the proposed family have been obtained with special concentration on a three-parameter submodel of the new class of distributions, named the new extended exponentiated Weibull distribution. The unknown model parameter estimates are obtained via the maximum likelihood estimation method. To assess the performance of these estimates, a comprehensive simulation study is conducted. Three different sets of COVID-19 data are used to check the applicability of the submodel case. The submodel of the new family is compared with three well-known probability distributions. Using different analytical measures, the results demonstrate that the new extended exponentiated Weibull distribution gives promising results in terms of its flexibility and offers data modeling with increasing decreasing, unimodal, and modified unimodal shapes.

Suggested Citation

  • Muhammad Arif & Dost Muhammad Khan & Muhammad Aamir & Umair Khalil & Rashad A. R. Bantan & Mohammed Elgarhy & Gul Rahmat, 2022. "Modeling COVID-19 Data with a Novel Extended Exponentiated Class of Distributions," Journal of Mathematics, Hindawi, vol. 2022, pages 1-14, February.
  • Handle: RePEc:hin:jjmath:1908161
    DOI: 10.1155/2022/1908161
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