1. Statistical Inference on a Finite Mixture of Exponentiated Kumaraswamy-G Distributions with Progressive Type II Censoring Using Bladder Cancer Data.
- Author
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Alotaibi, Refah, Baharith, Lamya A., Almetwally, Ehab M., Khalifa, Mervat, Ghosh, Indranil, and Rezk, Hoda
- Subjects
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FINITE mixture models (Statistics) , *INFERENTIAL statistics , *BLADDER cancer , *WEIBULL distribution , *MAXIMUM likelihood statistics , *CENSORSHIP - Abstract
A new family of distributions called the mixture of the exponentiated Kumaraswamy-G (henceforth, in short, ExpKum-G) class is developed. We consider Weibull distribution as the baseline (G) distribution to propose and study this special sub-model, which we call the exponentiated Kumaraswamy Weibull distribution. Several useful statistical properties of the proposed ExpKum-G distribution are derived. Under the classical paradigm, we consider the maximum likelihood estimation under progressive type II censoring to estimate the model parameters. Under the Bayesian paradigm, independent gamma priors are proposed to estimate the model parameters under progressive type II censored samples, assuming several loss functions. A simulation study is carried out to illustrate the efficiency of the proposed estimation strategies under both classical and Bayesian paradigms, based on progressively type II censoring models. For illustrative purposes, a real data set is considered that exhibits that the proposed model in the new class provides a better fit than other types of finite mixtures of exponentiated Kumaraswamy-type models. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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