CUM DUAL PRODUCT ESTIMATOR FOR THE POPULATION MEAN USING RANKED SET SAMPLING

Ilugbo Stephen Olubusola, Raji Idowu, O. Adeyanju, Afolabi Habeeb Abiodun
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Abstract

It has been shown that Ranked Set Sampling (RSS) is highly beneficial to the estimation based on Simple Random Sampling (SRS). There has been considerable development and many modifications were done to this method. The problem of estimating the population means is an integral aspect of a scientific survey. The estimators were examined for cum-dual products under Ranked Set Sampling (RSS), while the first-order approximation to the bias and Mean Square Error (MSE) of the proposed estimators were obtained. The numerical illustration of the comparisons was carried out to support the claim that the proposed estimators are more efficient than some existing estimators. Data were simulated for study variable y and auxiliary variable x using R software for the analysis to support the claim. The result shows that MSE of the proposed estimators, y ̅_(pd,RSS)^* is smaller than the MSE of the existing estimators y ̅_pd^*,y ̅_Rd^*, y ̅_(R,RSS)^*,y ̅_(RSS,MM1)^* and y ̅_(RSS,MM2)^* and y ̅_(RSS,MM3)^* at ρ = −0.1,−0.2,0.1,0.2, hence, the proposed estimator performed better than the existing estimators. While the MSE of the proposed estimator yy ̅_(pd,RSS)^* is greater than the MSE of the existing estimators y ̅_pd^* and y ̅_Rd^* at ρ = -0.3 and 0.3. However, the proposed estimator y ̅_(pd,RSS)^* does not perform better than the estimators, y ̅_pd^*,and y ̅_Rd^* at ρ = -0.3 and 0.3. It was concluded that the proposed estimator was more efficient than a class of regression estimators and four existing ratio-type estimators based on RSS.
用秩集抽样对总体均值进行双积估计
研究表明,排序集抽样(RSS)对基于简单随机抽样(SRS)的估计非常有利。这种方法已经有了相当大的发展和许多修改。估计总体均值的问题是科学调查的一个组成部分。在排序集抽样(RSS)下对估计量进行了检验,得到了估计量偏差和均方误差(MSE)的一阶近似。数值说明的比较进行了支持的主张,即所提出的估计比一些现有的估计更有效。使用R软件模拟研究变量y和辅助变量x的数据进行分析,以支持该主张。结果表明,在ρ = - 0.1, - 0.2,0.1,0.2时,所提估计量y′_(pd,RSS)^*的MSE小于现有估计量y′_pd^*、y′_ rd ^*、y′_(R,RSS)^*、y′_(RSS,MM1)^*、y′_(RSS,MM2)^*和y′_(RSS,MM3)^*的MSE,因此,所提估计量的性能优于现有估计量。而在ρ = -0.3和0.3时,所提出的估计量yy _(pd,RSS)^*的MSE大于现有估计量y _(pd ^*和y _(rd ^*)的MSE。然而,在ρ = -0.3和0.3时,所提出的估计量y _(pd,RSS)^*的性能并不比y _(pd ^*)和y _(rd ^*)的估计量好。结果表明,该估计器比一类回归估计器和现有的四种基于RSS的比率估计器更有效。
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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