An efficient application of scrambled response approach to estimate the population mean of the sensitive variables

Atiqa Zahid, S. Masood, Sumaira Mubarik, Anwarud Din
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引用次数: 3

Abstract

In the presence of one auxiliary variable and two auxiliary variables, we analyze various exponential estimators. The ranks of the auxiliary variables are also connected with the study variables, and there is a linkage between the study variables and the auxiliary variables. These ranks can be used to improve an estimator's accuracy. The Optional Randomized Response Technique (ORRT) and the Quantitative Randomized Response Technique are two techniques we utilize to estimate the sensitive variables from the population mean (QRRT). We used the scrambled response technique and checked the proposed estimators up to the first-order of approximation. The mean square error (MSE) equations are obtained for all the proposed ratio exponential estimators and show that our proposed exponential type estimator is more efficient than ratio estimators. The expression of mean square error is obtained up to the first degree of approximation. The empirical and theoretical comparison of the proposed estimators with existing estimators is also be carried out. We have shown that the proposed optional randomized response technique and quantitative randomized response model are always better than existing estimators. The simulation study is also carried out to determine the performance of the estimators. Few real-life data sets are also be applied in support of proposed estimators. It is observed that our suggested estimator is more efficient as compared to an existing estimator.
利用加扰响应方法估计敏感变量的总体均值
在一个辅助变量和两个辅助变量存在的情况下,我们分析了各种指数估计量。辅助变量的等级也与研究变量相连,研究变量与辅助变量之间存在着联系。这些秩可以用来提高估计器的精度。选择性随机反应技术(ORRT)和定量随机反应技术(QRRT)是两种从总体均值(QRRT)中估计敏感变量的技术。我们使用了打乱响应技术,并检验了所提出的估计量达到一阶近似。得到了所有比率指数估计的均方误差(MSE)方程,并表明指数估计比比率估计更有效。得到了一阶近似下的均方误差表达式。本文还对所提出的估计量与现有估计量进行了经验和理论比较。我们已经证明了所提出的可选随机响应技术和定量随机响应模型总是优于现有的估计器。为了确定估计器的性能,还进行了仿真研究。一些实际数据集也被用于支持所建议的估计。可以观察到,与现有的估计器相比,我们建议的估计器更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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