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INFERENCE FOR THE EXTREME VALUE DISTRIBUTION UNDER PROGRESSIVE TYPE-Ⅱ CENSORING

机译:渐进Ⅱ型删失下极值分布的推论

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The extreme value distribution has been extensively used to model natural phenomena such as rainfall and floods, and also in modeling lifetimes and material strengths. Maximum likelihood estimation (MLE) for the parameters of the extreme value distribution leads to likelihood equations that have to be solved numerically, even when the complete sample is available. In this paper, we discuss point and interval estimation based on progressively Type-Ⅱ censored samples. Through an approximation in the likelihood equations, we obtain explicit estimators which are approximations to the MLEs. Using these approximate estimators as starting values, we obtain the MLEs using an iterative method and examine numerically their bias and mean squared error. The approximate estimators compare quite favorably to the MLEs in terms of both bias and efficiency. Results of the simulation study, however, show that the probability coverages of the pivotal quantities (for location and scale parameters) based on asymptotic normality are unsatisfactory for both these estimators and particularly so when the effective sample size is small. We, therefore, suggest the use of unconditional simulated percentage points of these pivotal quantities for the construction of confidence intervals. The results are presented for a wide range of sample sizes and different progressive censoring schemes. We conclude with an illustrative example.
机译:极值分布已广泛用于对自然现象(例如降雨和洪水)进行建模,以及在对寿命和材料强度进行建模时。极值分布参数的最大似然估计(MLE)导致即使在有完整样本可用的情况下,也必须通过数值求解似然方程。在本文中,我们讨论了基于渐进Ⅱ型删失样本的点和区间估计。通过似然方程的逼近,我们获得了显式估计器,它是MLE的近似。使用这些近似估计量作为起始值,我们使用迭代方法获得MLE,并在数值上检查其偏差和均方误差。就偏倚和效率而言,近似估计量与MLE相比非常有利。然而,模拟研究的结果表明,对于这两个估计量,尤其是当有效样本量较小时,基于渐近正态性的关键量(针对位置和比例参数)的概率覆盖率均不令人满意。因此,我们建议使用这些关键量的无条件模拟百分比来构建置信区间。给出的结果适用于各种样本量和不同的渐进式检查方案。我们以一个说明性的例子作为结束。

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