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Estimation for the parameters of the Burr Type Ⅻ distribution under doubly censored sample with application to microfluidics data

机译:双删失样本下BurrⅫ分布的参数估计及其在微流体数据中的应用

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Abstract The Burr Type Ⅻ distribution has been widely applied in the real data analysis. In the censored data modeling, adopting the efficient parameter estimation methods and then predicting the censored observation are very important. In this paper, the parameters estimation and prediction of the Burr Type Ⅻ distribution under the doubly censoring scheme are studied. The maximum likelihood estimates of the unknown parameters are earned through the Expectation-Maximization (EM) algorithm. Since the Bayes estimators cannot be evaluated in explicit form, we propose to apply the Tierney and Kadane's and Markov Chain Monte Carlo procedure to approximate them. The asymptotic and the highest posterior density credible confidence intervals for the unknown parameters are introduced. Based on the Monte Carlo simulations, different proposed estimators are compared. The predictive intervals of the future observation are also constructed. Finally, the proposed methods have been studied using the two real microfluidics data.
机译:摘要BurrⅫ分布在实际数据分析中得到了广泛的应用。在审查数据建模中,采用有效的参数估计方法然后预测被审查的观测值非常重要。本文研究了双重检查方案下Burrr分布的参数估计和预测。未知参数的最大似然估计是通过Expectation-Maximization(EM)算法获得的。由于无法以显式形式评估贝叶斯估计量,因此我们建议应用Tierney和Kadane和Markov Chain Monte Carlo过程对其进行近似。介绍了未知参数的渐近和最高后验密度可信置信区间。基于蒙特卡洛模拟,比较了不同的提议估计量。还建立了未来观测的预测间隔。最后,使用两个真实的微流体数据研究了所提出的方法。

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