Wider Classes of Estimators in Adaptive Cluster Sampling

Rajesh Singh, Rohan Mishra
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Abstract

Aims/ Objectives: Various efficient estimators using single and dual auxiliary variables with different functions including log and exponential have been developed in the SRSWOR design. Since the Adaptive cluster sampling (ACS) design is relatively new, estimators using functions like log and exponential with single and dual auxiliary variables have not been explored much. Therefore in this article, we propose two wider classes of estimators using single and dual auxiliary variables respectively so that the properties like bias and mean squared errors of various estimators using functions like log and exponential or any other function which belong to the proposed wider classes and have not been developed and studied yet would be known in advance. Formulae of the bias and mean squared error have been derived and presented. Further, since log type estimators have not been studied extensively in the ACS design we have developed new log type classes from each of the proposed wider classes and developed and studied some new log type member estimators. To examine the performance of these new developed log-type estimators over some competing estimators simulation studies have been conducted and all the estimators are further applied to a real data to estimate the average number of Mules in the Indian state of Assam. The studies show that the developed log-type estimators perform better.
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自适应聚类抽样中更广类别的估计量
目的/目标:在SRSWOR设计中,使用具有不同函数(包括对数和指数)的单和双辅助变量的各种有效估计器已经开发出来。由于自适应聚类抽样(ACS)设计相对较新,使用对数和指数等函数的单辅助变量和双辅助变量的估计器尚未得到太多探索。因此,在本文中,我们分别提出了使用单辅助变量和对偶辅助变量的两种更广泛的估计量,以便提前知道使用对数和指数等函数或属于所提出的更广泛类别但尚未开发和研究的任何其他函数的各种估计量的偏差和均方误差等性质。推导并给出了偏差和均方误差的计算公式。此外,由于在ACS设计中还没有对日志类型估计器进行广泛的研究,我们从每个提议的更广泛的类中开发了新的日志类型类,并开发和研究了一些新的日志类型成员估计器。为了检验这些新开发的对数型估计器与一些竞争估计器的性能,进行了模拟研究,并将所有估计器进一步应用于实际数据,以估计印度阿萨姆邦的骡子平均数量。研究表明,所开发的对数型估计器性能较好。
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