The mean past lifetime (MPL) is an important tool in reliability and survival analysis for measuring the average time elapsed since the occurrence of an event, under the condition that the event has occurred before a specific time $t>0$. This article develops a nonparametric estimator for MPL based on observations collected according to ranked set sampling (RSS) design. It is shown that the estimator that we have developed is a strongly uniform consistent. It is also proved that the introduced estimator tends to a Gaussian process under some mild conditions. A Monte Carlo simulation study is employed to evaluate the performance of the proposed estimator with its competitor in simple random sampling (SRS). Our findings show the introduced estimator is more efficient than its counterpart estimator in SRS as long as the quality of ranking is better than random. Finally, an illustrative example is provided to describe the potential application of the developed estimator in assessing the average time between the infection and diagnosis in HIV patients.
翻译:过去的平均寿命(MPL)是可靠和生存分析的一个重要工具,用于测量事件发生以来的平均时间,条件是该事件是在特定时间之前发生的,但前提是该事件发生在1美元>0美元之前。本文章根据根据按等级排列的抽样设计收集的观察结果,为MPL开发了一个非参数估计器。我们开发的测算器非常一致。还证明,引入的测算器在某种温和的条件下倾向于高斯过程。Monte Carlo模拟研究用于评估拟议的测算器与其竞争者在简单随机抽样中的性能。我们的调查结果显示,只要定级质量好于随机性,引入的测算器比SRS中的对应测算器更有效。最后,提供了一个例子,说明开发的测算器在评估艾滋病毒感染者感染和诊断之间的平均时间方面的潜在应用。