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A comparison of robust estimators based on two types of trimming

机译:基于两种修整的鲁棒估计量比较

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The least trimmed squares (LTS) estimator and the trimmed mean (TM) are two well-known trimming-based estimators of the location parameter. Both estimates are used in practice, and they are implemented in standard statistical software (e.g., S-PLUS, R, Matlab, SAS). The breakdown point of each of these estimators increases as the trimming proportion increases, while the efficiency decreases. Here we have shown that for a wide range of distributions with exponential and polynomial tails, TM is asymptotically more efficient than LTS as an estimator of the location parameter, when they have equal breakdown points.
机译:最小修剪平方(LTS)估计器和修剪平均值(TM)是位置参数的两个众所周知的基于修剪的估计器。这两种估算值都在实践中使用,并且在标准统计软件(例如S-PLUS,R,Matlab,SAS)中实现。随着修整比例的增加,这些估计器的每个击穿点都增加,而效率下降。在这里,我们表明,对于具有指数尾部和多项式尾部的各种分布,当它们具有相同的击穿点时,TM渐近地比作为位置参数估计器的LTS更有效。

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