基于渐进式ii型滤波的ii型极值分布估计

K. Ahmadi, V. A. Khalaf, M. Rezaei
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摘要

本文讨论了观测数据逐次被ii型截除时,ii型极值(evi)分布的未知参数和可靠性函数的统计推断。通过应用EM算法,我们得到了极大似然估计。我们还提出了近似最大似然估计(AMLEs),它具有显式表达式。我们通过平方误差损失、LINEX损失和一般熵损失函数提供对称和非对称损失函数的贝叶斯估计。贝叶斯估计是利用林德利和马尔可夫链蒙特卡罗技术的思想得到的。最后,用蒙特卡罗模拟来说明本文所讨论的方法。并对实际数据集进行了分析。
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Estimation for the Type-II Extreme Value Distribution Based on Progressive Type-II Censoring
In this paper, we discuss the statistical inference on the unknown parameters and reliability function of type-II extreme value (EVII ) distribution when the observed data are progressively type-II censored. By applying EM algorithm, we obtain maximum likelihood estimates (MLEs). We also suggest approximate maximum likelihood estimators (AMLEs), which have explicit expressions. We provide Bayes estimates using both the symmetric and asymmetric loss functions via squared error loss, LINEX loss, and general entropy loss functions. Bayes estimates are obtained using the idea of Lindley and Markov chain Monte Carlo techniques. Finally, Monte Carlo simulations are presented to illustrate the methods discussed in this paper. Analysis is also carried out for a real data set.
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