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Robust estimation under progressive censoring

机译:渐进审查下的稳健估计

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For progressively censored failure time data, the influence function and the breakdown point of robust M-estimators are derived. The most robust and the optimal robust estimators are also developed. The optimal members within two classes of ψ-functions are characterized. The first optimality result is the censored data analogue of the general optimality result. The second result pertains to a restricted class of ψ-functions. The usefulness of the two classes of ψ-functions is examined and it was found that the breakdown point and efficiency of the restricted class of optimal estimators compare favorably with those of the corresponding general optimal robust estimators. From the computational point of view, the restricted class of optimal ψ-functions are readily obtainable from the general optimal ψ-functions in the uncensored case. A data set illustrates the optimal robust estimators for the parameters of the extreme value distribution.
机译:对于逐步删失的故障时间数据,得出了鲁棒M估计量的影响函数和崩溃点。还开发了最鲁棒和最优的鲁棒估计器。表征了两类ψ函数内的最优成员。第一个最优结果是一般最优结果的删失数据类似物。第二个结果与ψ函数的受限类有关。研究了两类ψ函数的有用性,发现受限类的最优估计量的分解点和效率与相应的一般最优鲁棒估计量相比具有优势。从计算的角度来看,在未经审查的情况下,可以从一般的最优ψ函数轻松获得最优ψ函数的受限类。数据集说明了极值分布参数的最佳鲁棒估计量。

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