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Small sample inference for exponential survival times with heavy right-censoring

机译:小型样品推论,具有较重审查的指数生存时间

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We develop a saddlepoint-based method and several generalized Bartholomew methods for generating confidence intervals about the hazard rate of exponential survival times in the presence of heavy random right-censoring. Butler's conditional moment generating function (MGF) formula is used to derive the MGF for the hazard rate score function which provides access to a saddlepoint-based bootstrap method. MGFs also play a key role in the generalized Bartholomew methods we develop. Since heavy censoring is assumed, the possible nonexistence of the rate parameter maximum likelihood estimate (MLE) is nonignorable. The overwhelming majority of existing methods condition upon the event that the number of observed failures is non-zero (rate parameter MLE exists). With heavy censoring these methods may not be able to produce a confidence interval an appreciable percentage of times. Our proposed methods are unconditional in the sense that they can produce confidence intervals even when the hazard rate MLE does not exist. The unconditional saddlepoint method in particular defaults in a natural way to a proposed generalized Bartholomew method when the hazard rate MLE fails to exist. We find in our Monte Carlo studies that the proposed saddlepoint method outperforms the four competing Bartholomew methods in the presence of heavy censoring and small sample sizes.
机译:我们开发了一种基于马鞍点的方法和几种广义的巴塞洛缪方法,用于产生关于在大规模右审查的存在中指数存活时间的危害率的置信区间。 Butler的有条件时刻产生功能(MGF)公式用于导出危险率得分函数的MGF,其提供对基于鞍点的引导方法的访问。 MGFS还在我们开发的广义Bartholomew方法中发挥着关键作用。由于假设严重审查,因此速率参数最大似然估计(MLE)的可能不可能是不可能的。在观察到的故障的数量是非零的情况下,现有方法的绝大多数现有方法条件是不归零的(率参数MLE)。重审审查这些方法可能无法产生置信区间的可观百分比。我们所提出的方法是无条件的,因为即使当危险率MLE不存在时,它们也能产生置信区间。当危险速率MLE未存在时,特别是以自然的方式默认的无条件鞍点法,以自然的方式到提出的广义巴塞洛缪方法。我们在蒙特卡罗的研究中找到了所提出的鞍点方法,在重度抗冲和小样本尺寸存在下表现出四种竞争的巴塞洛缪方法。

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