School of Statistics, Shanxi University of Finance and Economic, Taiyuan, China.
Department of Statistics, University of Malakand, Dir (L), KP, Pakistan.
Comput Math Methods Med. 2020 May 26;2020:4650520. doi: 10.1155/2020/4650520. eCollection 2020.
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-, 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.
在过去的几年中,统计分布在可靠性工程、医学和金融科学等应用领域得到了广泛的应用。在这种情况下,我们遇到了各种用于建模重尾数据集的统计分布。著名的分布有对数正态分布、对数分布、各种形式的帕累托分布、对数逻辑分布、威布尔分布、伽马分布、指数分布、瑞利分布及其变体,以及第二类广义贝塔分布等。在本文中,我们试图通过引入一种新的模型来补充分布理论文献,称为新的扩展威布尔分布。所提出的分布非常灵活,并具有理想的特性。模型参数的最大似然估计值已经得到,并且进行了蒙特卡罗模拟研究以评估这些估计值的行为。最后,我们通过分析来自可靠性工程、医学和金融科学等不同领域的三个真实数据集,对新提出的方法和其他一些现有方法进行了比较研究。根据模型选择标准,观察到提出的方法在许多方面都优于著名的分布。