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Comparison of estimation methods for the finite population mean in simple random sampling: symmetric super-populations

机译:简单随机抽样中的有限总体均值估计方法的比较:对称超种群

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摘要

In this paper, a new estimator combined estimator (CE) is proposed for estimating the finite population mean Y_N in simple random sampling assuming a long-tailed symmetric super-population model. The efficiency and robustness properties of the CE is compared with the widely used and well-known estimators of the finite population mean Y_N by Monte Carlo simulation. The parameter estimators considered in this study are the classical least squares estimator, trimmed mean, winsorized mean, trimmed L-mean, modified maximum-likelihood estimator, Huber estimator (W24) and the non-parametric Hodges-Lehmann estimator. The mean square error criteria are used to compare the performance of the estimators. We show that the CE is overall more efficient than the other estimators. The CE is also shown to be more robust for estimating the finite population mean Y_N, since it is insensitive to outliers and to misspecification of the distribution. We give a real life example.
机译:本文提出了一种新的估计器组合估计器(CE),用于在假设长尾对称超种群模型的情况下,在简单随机抽样中估计有限总体均值Y_N。通过蒙特卡洛模拟,将CE的效率和鲁棒性与广泛使用的有限总体均值Y_N的估计器进行比较。在这项研究中考虑的参数估计量是经典最小二乘估计量,修剪均值,winsorized均值,修剪L均值,修正的最大似然估计量,Huber估计量(W24)和非参数Hodges-Lehmann估计量。均方误差标准用于比较估计器的性能。我们表明,CE总体上比其他估算器更有效。还显示出CE对于估计有限总体均值Y_N更为稳健,因为它对异常值和分布的错误指定不敏感。我们举一个真实的例子。

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