Title of article :
A New Extended-X Family of Distributions: Properties and Applications
Author/Authors :
Zichuan, Mi School of Statistics - Shanxi University of Finance and Economic - Taiyuan, China , Hussain, Saddam School of Statistics - Shanxi University of Finance and Economic - Taiyuan, China , Iftikhar, Anum School of Statistics - Shanxi University of Finance and Economic - Taiyuan, China , Ilyas, Muhammad Department of Statistics - University of Malakand - Dir (L), Pakistan , Ahmad, Zubair Department of Statistics - Yazd University - Yazd, Iran , Muhammad Khan, Dost Department of Statistics - Abdul Wali University Mardan, Pakistan , Manzoor, Sadaf Department of Statistics - Islamia College Peshawar, Pakistan
Abstract :
During the past couple of years, statistical distributions have been widely used in applied areas such as reliability engineering,
medical, and financial sciences. In this context, we come across a diverse range of statistical distributions for modeling heavy
tailed data sets. Well-known distributions are log-normal, log-t, various versions of Pareto, log-logistic, Weibull, gamma,
exponential, Rayleigh and its variants, and generalized beta of the second kind distributions, among others. In this paper, we try
to supplement the distribution theory literature by incorporating a new model, called a new extended Weibull distribution. The
proposed distribution is very flexible and exhibits desirable properties. Maximum likelihood estimators of the model parameters
are obtained, and a Monte Carlo simulation study is conducted to assess the behavior of these estimators. Finally, we provide a
comparative study of the newly proposed and some other existing methods via analyzing three real data sets from different
disciplines such as reliability engineering, medical, and financial sciences. It has been observed that the proposed method
outclasses well-known distributions on the basis of model selection criteria.
Keywords :
Extended-X , Distributions , Demicheli
Journal title :
Computational and Mathematical Methods in Medicine