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Modified Weibull model: A Bayes study using MCMC approach based on progressive censoring data

机译:改进的Weibull模型:基于渐进式检查数据的MCMC方法进行的Bayes研究

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In this paper, we investigate the problem of point and interval estimations for the modified Weibull distribution (MWD) using progressively type-Ⅱ censored sample. The maximum likelihood (ML), Bayes, and parametric bootstrap methods are used for estimating the unknown parameters as well as some lifetime parameters (reliability and hazard functions). Also, we propose to apply Markov chain Monte Carlo (MCMC) technique to carry out a Bayesian estimation procedure. Bayes estimates and the credible intervals are obtained under the assumptions of informative and noninformative priors. The results of Bayes method are obtained under both the balanced squared error loss (bSEL) and balanced linear-exponential (bLINEX) loss. We show that these loss functions are more general, which include the MLE and both symmetric and asymmetric Bayes estimates as special cases. Finally, Two real data sets have been analyzed for illustrative purposes.
机译:在本文中,我们研究了使用渐进式Ⅱ型删失样本修改的威布尔分布(MWD)的点和区间估计问题。最大似然(ML),贝叶斯和参数自举方法用于估计未知参数以及某些生命周期参数(可靠性和危害函数)。另外,我们建议应用马尔可夫链蒙特卡洛(MCMC)技术来进行贝叶斯估计程序。贝叶斯估计和可信区间是在先验信息和非先验信息的假设下获得的。在平衡平方误差损失(bSEL)和平衡线性指数(bLINEX)损失下获得贝叶斯方法的结果。我们表明,这些损失函数更为通用,其中包括MLE以及对称和非对称贝叶斯估计作为特殊情况。最后,出于说明目的对两个真实数据集进行了分析。

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