A 3-Component Mixture of Exponential Distribution Assuming Doubly Censored Data: Properties and Bayesian Estimation

Muhammad Tahir, M. Aslam, M. Abid, Sajid Ali, M. Ahsanullah
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引用次数: 5

Abstract

The output of an engineering process is the result of several inputs, which may be homogeneous or heterogeneous and to study them, we need a model which should be flexible enough to summarize efficiently the nature of such processes. As compared to simple models, mixture models of underlying lifetime distributions are intuitively more appropriate and appealing to model the heterogeneous nature of a process in survival analysis and reliability studies. Moreover, due to time and cost constraints, in the most lifetime testing experiments, censoring is an unavoidable feature. This article focuses on studying a mixture of exponential distributions, and we considered this particular distribution for three reasons. The first reason is its application in reliability modeling of electronic components and the second important reason is its skewed behavior. Similarly, the third and themost important reason is that exponential distribution has thememory-less property. In particular, we deal with the problem of estimating the parameters of a 3-component mixture of exponential distributions using type-II doubly censoring sampling scheme. The elegant closed-form expressions for the Bayes estimators and their posterior risks are derived under squared error loss function, precautionary loss function and DeGroot loss function assuming the noninformative (uniform and Jeffreys’) and the informative priors. A detailedMonte Carlo simulation and real data studies are carried out to investigate the performance (in terms of posterior risks) of the Bayes estimators. From results, it is observed that the Bayes estimates assuming the informative prior perform better than the noninformative priors.
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双截尾数据下指数分布的三分量混合:性质和贝叶斯估计
工程过程的输出是几个输入的结果,这些输入可能是同质的也可能是异质的,为了研究它们,我们需要一个足够灵活的模型来有效地总结这些过程的本质。与简单模型相比,潜在寿命分布的混合模型直观上更适合于对生存分析和可靠性研究中过程的异质性进行建模。此外,由于时间和成本的限制,在大多数寿命测试实验中,审查是一个不可避免的特征。本文主要研究混合指数分布,我们考虑这种特殊分布有三个原因。首先是它在电子元件可靠性建模中的应用,其次是它的偏斜行为。同样,第三个也是最重要的原因是指数分布具有无内存特性。特别地,我们处理了用ii型双截除抽样方案估计指数分布的三分量混合物参数的问题。在误差平方损失函数、预防损失函数和DeGroot损失函数假设非信息(均匀和杰弗里斯)先验和信息先验条件下,导出了贝叶斯估计量及其后验风险的优雅的封闭表达式。通过详细的蒙特卡罗模拟和真实数据研究来研究贝叶斯估计器的性能(就后验风险而言)。从结果中可以观察到,假设信息先验的贝叶斯估计比非信息先验的贝叶斯估计表现得更好。
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来源期刊
CiteScore
2.30
自引率
0.00%
发文量
13
审稿时长
13 weeks
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