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Survival analysis for the missing censoring indicator model using kernel density estimation techniques

机译:使用核密度估计技术对缺失的检查指标模型进行生存分析

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摘要

This article concerns asymptotic theory for a new estimator of a survival function in the missing censoring indicator model of random censorship. Specifically, the large sample results for an inverse probability-of-non-missingness weighted estimator of the cumulative hazard function, so far not available, are derived, including an almost sure representation with rate for a remainder term, and uniform strong consistency with rate of convergence. The estimator is based on a kernel estimate for the conditional probability of non-missingness of the censoring indicator. Expressions for its bias and variance, in turn leading to an expression for the mean squared error as a function of the bandwidth, are also obtained. The corresponding estimator of the survival function, whose weak convergence is derived, is asymptotically efficient. A numerical study, comparing the performances of the proposed and two other currently existing efficient estimators, is presented.
机译:本文关注的是渐进理论,该理论用于随机审查的缺失审查指标模型中生存函数的新估计。具体而言,得出了迄今为止尚不可用的累积危险函数的不失概率逆加权估计量的大样本结果,包括几乎确定的剩余率比率,以及与比率一致的强一致性融合。估计器基于核对估计指标不遗漏的条件概率。还获得了其偏差和方差的表达式,进而得出了均方误差作为带宽函数的表达式。派生出弱收敛性的生存函数的相应估计量在渐近有效。进行了数值研究,比较了所提出的和目前存在的另外两个有效估计量的性能。

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