Symmetry (Nov 2022)

General Entropy with Bayes Techniques under Lindley and MCMC for Estimating the New Weibull–Pareto Parameters: Theory and Application

  • Mohamed S. Eliwa,
  • Rashad M. EL-Sagheer,
  • Samah H. El-Essawy,
  • Bader Almohaimeed,
  • Fahad S. Alshammari,
  • Mahmoud El-Morshedy

DOI
https://doi.org/10.3390/sym14112395
Journal volume & issue
Vol. 14, no. 11
p. 2395

Abstract

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Censored data play a pivotal role in life testing experiments since they significantly reduce cost and testing time. Hence, this paper investigates the problem of statistical inference for a system of progressive first-failure censoring data for a new Weibull–Pareto distribution. Maximum likelihood estimates for the parameters as well as some lifetime indices such as reliability, hazard rate functions, and coefficient of variation are derived. Lindley approximation and the Markov chain Monte Carlo technique are applied to obtain the Bayes estimates relative to two different loss functions: balanced linear exponential and general entropy loss functions. The results of the Bayes estimate are computed under the consideration of informative prior function. A real-life example "the survival times in years of a group of patients given chemotherapy treatment" is presented to illustrate the proposed methods. Finally, a simulation study is carried out to determine the performance of the maximum likelihood and Bayes estimates and compare the performance of different corresponding confidence intervals.

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