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Bias Correction Technique for Estimating Quantiles of Finite Populations under Simple Random Sampling without Replacement

机译:偏置校正技术,用于估计简单随机抽样下有限群体的数量而无需替换

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In this paper, the problem of nonparametric estimation of finite population quantile function using multiplicative bias correction technique is considered. A robust estimator of the finite population quantile function based on multiplicative bias correction is derived with the aid of a super population model. Most studies have concentrated on kernel smoothers in the estimation of regression functions. This technique has also been applied to various methods of non-parametric estimation of the finite population quantile already under review. A major problem with the use of nonparametric kernel-based regression over a finite interval, such as the estimation of finite population quantities, is bias at boundary points. By correcting the boundary problems associated with previous model-based estimators, the multiplicative bias corrected estimator produced better results in estimating the finite population quantile function. Furthermore, the asymptotic behavior of the proposed estimators is presented . It is observed that the estimator is asymptotically unbiased and statistically consistent when certain conditions are satisfied. The simulation results show that the suggested estimator is quite well in terms of relative bias, mean squared error, and relative root mean error. As a result, the multiplicative bias corrected estimator is strongly suggested for survey sampling estimation of the finite population quantile function.
机译:在本文中,考虑了使用乘法偏压校正技术的有限群体量级函数的非参数估计的问题。借助于超级群体模型导出基于乘法偏压校正的有限级别定量函数的鲁棒估算器。大多数研究集中在估算回归函数中的核心。该技术也已应用于已经审查的有限群体数量的各种非参数估计的方法。在有限间隔上使用非参数内核的回归的主要问题,例如有限群体量的估计,是边界点的偏差。通过校正与基于模型的基于模型的估计相关的边界问题,乘法偏置校正估计器在估计有限群体定位函数方面产生了更好的结果。此外,提出了拟议估计人的渐近行为。观察到估计器在满足某些条件时,估计器是渐近的和统计上一致的。仿真结果表明,建议的估计是在相对偏差,均方平均误差和相对根部平均误差方面非常好。结果,强烈建议乘法偏置校正估计器进行有限群体定量函数的调查采样估计。

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