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Analysis of middle-censored data with exponential lifetime distributions

机译:具有指数寿命分布的中义数据分析

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Recently Jammalamadaka and Mangalam [2003. Non-parametric estimation for e censored data. J. Nonparametric Statist. 15,253-265] introduced a general censoring scheme called the "middle-censoring" scheme in non-parametric set up. In this paper we consider this middle-censoring scheme when the lifetime distribution of the items is exponentially distributed and the censoring mechanism is independent and non-informative. In this set up, we derive the maximum likelihood estimator and study its consistency and asymptotic normality properties. We also derive the Bayes estimate of the exponential parameter under a gamma prior. Since a theoretical construction of the credible interval becomes quite difficult, we propose and implement Gibbs sampling technique to construct the credible intervals. Monte Carlo simulations are performed to evaluate the small sample behavior of the techniques proposed. A real data set is analyzed to illustrate the practical application of the proposed methods.
机译:最近Jammalamadaka和Mangalam [2003年。 E义数据的非参数估计。 J.非参数陈述。 15,253-265]介绍了一个称为“中间审查”方案的一般审查方案,以非参数设置。 在本文中,当物品的寿命分布是指数分布的,审查机制是独立而非信息性的,我们考虑这种中间审查方案。 在此设置中,我们推出了最大似然估计,并研究其一致性和渐近正常性。 我们还在伽玛之前派生指数参数的贝叶斯估计。 由于可信间隔的理论建设变得非常困难,我们提出并实施了GIBBS采样技术来构建可靠的间隔。 进行蒙特卡罗模拟以评估所提出的技术的小样本行为。 分析真实数据集以说明所提出的方法的实际应用。

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