Statistical theory and practice of the inverse power Muth distribution

Christophe Chesneau , Varun Agiwal
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引用次数: 5

Abstract

The Muth distribution and its derivation have been used to construct numerous statistical models in recent years, with applications in a variety of fields. In this paper, we use the inverse scheme to introduce the inverse power Muth distribution. It thus constitutes a new three-parameter heavy-tailed lifetime distribution belonging to the family of inverse distributions, which does not appear to have received adequate attention in the literature. We naturally call it inverse power Muth distribution. Two complementary parts compose the article. The first part aims to determine the main statistical properties of the inverse power Muth distribution, such as the shape behavior of the probability density and hazard rate functions, the expression of the quantile function and the related quantities, and some moment measures. The second part is devoted to its practical aspects, with a focus on its modeling capabilities. We examine the estimation of the model parameters via several well-established methods, including classical and Bayesian estimation methods. Then, we illustrate the flexibility and potential usefulness of the inverse power Muth model by means of a simulation study and two real datasets. A fair investigation reveals that it can outperform existing and comparable three-parameter models also based on the inverse scheme.

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幂反分布的统计理论与实践
近年来,Muth分布及其推导被用于构建许多统计模型,应用于各个领域。在本文中,我们使用逆格式来引入逆幂Muth分布。因此,它构成了一种新的三参数重尾寿命分布,属于逆分布族,在文献中似乎没有得到足够的重视。我们自然地称之为逆幂分布。这篇文章由两个互补的部分组成。第一部分旨在确定逆幂Muth分布的主要统计性质,如概率密度和危险率函数的形状行为,分位数函数及其相关量的表达,以及一些矩测度。第二部分专注于它的实际方面,重点是它的建模能力。我们通过几种成熟的方法来研究模型参数的估计,包括经典和贝叶斯估计方法。然后,我们通过仿真研究和两个真实数据集来说明逆幂Muth模型的灵活性和潜在的有用性。公平的调查表明,它可以优于现有的和可比较的基于逆格式的三参数模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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