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Modelling the COVID-19 Mortality Rate with a New Versatile Modification of the Log-Logistic Distribution.

Abdisalam Hassan MuseAhlam H TolbaEman FayadOla A Abu AliM NagyM Yusuf
Published in: Computational intelligence and neuroscience (2021)
The goal of this paper is to develop an optimal statistical model to analyze COVID-19 data in order to model and analyze the COVID-19 mortality rates in Somalia. Combining the log-logistic distribution and the tangent function yields the flexible extension log-logistic tangent (LLT) distribution, a new two-parameter distribution. This new distribution has a number of excellent statistical and mathematical properties, including a simple failure rate function, reliability function, and cumulative distribution function. Maximum likelihood estimation (MLE) is used to estimate the unknown parameters of the proposed distribution. A numerical and visual result of the Monte Carlo simulation is obtained to evaluate the use of the MLE method. In addition, the LLT model is compared to the well-known two-parameter, three-parameter, and four-parameter competitors. Gompertz, log-logistic, kappa, exponentiated log-logistic, Marshall-Olkin log-logistic, Kumaraswamy log-logistic, and beta log-logistic are among the competing models. Different goodness-of-fit measures are used to determine whether the LLT distribution is more useful than the competing models in COVID-19 data of mortality rate analysis.
Keyphrases
  • coronavirus disease
  • sars cov
  • risk factors
  • electronic health record
  • immune response
  • machine learning
  • artificial intelligence
  • inflammatory response