Bayesian Inference for Inverse Power Exponentiated Pareto Distribution Using Progressive Type-II Censoring with Application to Flood-Level Data Analysis

Author:

Khalifa Eman H.1,Ramadan Dina A.1ORCID,Alqifari Hana N.2ORCID,El-Desouky Beih S.1ORCID

Affiliation:

1. Department of Mathematics, Faculty of Science, Mansoura University, Mansoura 35516, Egypt

2. Department of Statistics and Operation Research, College of Science, Qassim University, Buraydah 51482, Saudi Arabia

Abstract

Progressive type-II (Prog-II) censoring schemes are gaining traction in estimating the parameters, and reliability characteristics of lifetime distributions. The focus of this paper is to enhance the accuracy and reliability of such estimations for the inverse power exponentiated Pareto (IPEP) distribution, a flexible extension of the exponentiated Pareto distribution suitable for modeling engineering and medical data. We aim to develop novel statistical inference methods applicable under Prog-II censoring, leading to a deeper understanding of failure time behavior, improved decision-making, and enhanced overall model reliability. Our investigation employs both classical and Bayesian approaches. The classical technique involves constructing maximum likelihood estimators of the model parameters and their bootstrap covariance intervals. Using the Gibbs process constructed by the Metropolis–Hasting sampler technique, the Markov chain Monte Carlo method provides Bayesian estimates of the unknown parameters. In addition, an actual data analysis is carried out to examine the estimation process’s performance under this ideal scheme.

Funder

Deanship of Scientific Research, Qassim University

Publisher

MDPI AG

Reference19 articles.

1. Progressively censored samples in life testing;Cohen;Technometrics,1963

2. A new three-Parameters Inverse Power Exponentiated Pareto Distribution: Properties and its Applications;Khalifa;J. Fac. Sci.,2022

3. Discrimination between the log-normal and the Weibull distributions;Dumonceaux;Technometrics,1973

4. Balakrishnan, N., and Cramer, E. (2014). The Art of Progressive Censoring, Birkhäuser.

5. Estimation of parameters and reliability characteristics for a generalized Rayleigh distribution under progressive type-II censored sample;Maiti;Commun. Stat.-Simul. Comput.,2021

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