The New Generalized Exponentiated Fréchet-Weibull Distribution: Properties, Applications, and Regression Model

Hadeel S. Klakattawi, Aisha A. Khormi, L. Baharith
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引用次数: 0

Abstract

Statistical probability distributions are commonly used by data analysts and statisticians to describe and analyze their data. It is possible in many situations that data would not fit the existing classical distributions. A new distribution is therefore required in order to accommodate the complexities of different data shapes and enhance the goodness of fit. A novel model called the new generalized exponentiated Fréchet–Weibull distribution is proposed in this paper by combing two methods, the transformed transformer method and the new generalized exponentiated method. This novel modeling approach is capable of modeling complex data structures in a wide range of applications. Some statistical properties of the new distribution are derived. The parameters have been estimated using the method of maximum likelihood. Then, different simulation studies have been conducted to assess the behavior of the estimators. The performance of the proposed distribution in modeling has been investigated by means of applications to three real datasets. Further, a new regression model is proposed through reparametrization of the new generalized exponentiated Fréchet–Weibull distribution using the log-location-scale technique. The effectiveness of the proposed regression model is also investigated with two simulation studies and three real censored datasets. The results demonstrated the superiority of the proposed models over other competing models.
新的广义指数型fr -威布尔分布:性质、应用和回归模型
统计概率分布通常被数据分析师和统计学家用来描述和分析他们的数据。在许多情况下,数据可能不符合现有的经典分布。因此,为了适应不同数据形状的复杂性并提高拟合优度,需要一种新的分布。本文将变换变压器法和新的广义指数法相结合,提出了一种新的广义指数法——新广义指数法。这种新颖的建模方法能够在广泛的应用中对复杂的数据结构进行建模。导出了新分布的一些统计性质。用最大似然法对参数进行了估计。然后,进行了不同的模拟研究来评估估计器的行为。通过在三个实际数据集上的应用,研究了所提出的分布在建模中的性能。在此基础上,利用log-location-scale技术对新的广义指数fr切特-威布尔分布进行重新参数化,建立了新的回归模型。用两个仿真研究和三个真实的截尾数据集对所提出的回归模型的有效性进行了研究。结果表明,所提出的模型优于其他竞争模型。
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CiteScore
2.80
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