渐进式混合滤波下二类广义Logistic分布的推理

M. Azizpour, A. Asgharzadeh
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引用次数: 3

摘要

. 本文分析了当项目的寿命分布遵循ii型广义logistic分布时的ii型混合渐进式截尾数据。研究了用极大似然估计器估计位置和尺度参数的方法。可以观察到,mle不能以显式形式得到。我们通过适当地逼近似然方程来提供近似最大似然估计量(AMLEs)。提出了基于最大似然值和最大似然值的渐近置信区间和一个自举置信区间。对形状参数的估计也进行了讨论。为了比较不同方法的性能,我们进行了蒙特卡罗模拟,并对两个真实数据集进行了分析。
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Inference for the Type-II Generalized Logistic Distribution with Progressive Hybrid Censoring
. This article presents the analysis of the Type-II hybrid progressively censored data when the lifetime distributions of the items follow Type-II generalized logistic distribution. Maximum likelihood estimators (MLEs) are investigated for estimating the location and scale parameters. It is observed that the MLEs can not be obtained in explicit forms. We provide the approximate maximum likelihood estimators (AMLEs) by appropriately approximating the likelihood equations. Asymptotic confidence intervals based on MLEs and AMLEs and one bootstrap confidence interval are proposed. Estimation of the shape parameter is also discussed. Monte Carlo simula-tions are performed to compare the performances of the different methods and two real data sets have been analyzed for illustrative purposes.
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