Department of Mathematics and Statistics, International Islamic University, Islamabad, Pakistan.
Department of Mathematics and Statistics - PMAS-Arid Agriculture University, Rawalpindi, Pakistan.
PLoS One. 2022 Oct 24;17(10):e0276514. doi: 10.1371/journal.pone.0276514. eCollection 2022.
Ranked set sampling (RSS) has created a broad interest among researchers and it is still a unique research topic. It has at long last begun to find its way into practical applications beyond its initial horticultural based birth in the fundamental paper by McIntyre in the nineteenth century. One of the extensions of RSS is median ranked set sampling (MRSS). MRSS is a sampling procedure normally utilized when measuring the variable of interest is troublesome or expensive, whereas it might be easy to rank the units using an inexpensive sorting criterion. Several researchers introduced ratio, regression, exponential, and difference type estimators for mean estimation under the MRSS design. In this paper, we propose three new mean estimators under the MRSS scheme. Our idea is based on three-fold utilization of supplementary information. Specifically, we utilize the ranks and second raw moments of the supplementary information and the original values of the supplementary variable. The appropriateness of the proposed group of estimators is demonstrated in light of both real and artificial data sets based on the Monte-Carlo simulation. Additionally, the performance comparison is also conducted regarding the reviewed families of estimators. The results are empowered and the predominant execution of the proposed group of estimators is seen throughout the paper.
有序集抽样 (RSS) 在研究人员中引起了广泛的兴趣,它仍然是一个独特的研究课题。它终于开始超越最初基于 McIntyre 在 19 世纪的基础论文的园艺基础的应用,进入实际应用。RSS 的一个扩展是中位数有序集抽样 (MRSS)。MRSS 是一种抽样程序,通常用于测量感兴趣的变量很麻烦或很昂贵的情况,而使用廉价的排序标准对单位进行排序可能很容易。几位研究人员在 MRSS 设计下引入了比率、回归、指数和差分类型的估计量来进行均值估计。在本文中,我们在 MRSS 方案下提出了三种新的均值估计量。我们的想法基于对补充信息的三重利用。具体来说,我们利用补充信息的秩和二阶矩以及补充变量的原始值。基于蒙特卡罗模拟的真实和人工数据集,证明了所提出的一组估计量的适当性。此外,还对已审查的估计量家族进行了性能比较。结果得到了加强,并且在整篇文章中都可以看到所提出的一组估计量的主要执行情况。