Robust second-order least-squares estimator for regression models

被引:0
|
作者
Xin Chen
Min Tsao
Julie Zhou
机构
[1] University of Victoria,Department of Mathematics and Statistics
来源
Statistical Papers | 2012年 / 53卷
关键词
Breakdown point; High efficiency; Influence function; Linear regression; Outliers; Robust estimation; Second-order least-squares estimator; 62F35; 62J05;
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摘要
The second-order least-squares estimator (SLSE) was proposed by Wang (Statistica Sinica 13:1201–1210, 2003) for measurement error models. It was extended and applied to linear and nonlinear regression models by Abarin and Wang (Far East J Theor Stat 20:179–196, 2006) and Wang and Leblanc (Ann Inst Stat Math 60:883–900, 2008). The SLSE is asymptotically more efficient than the ordinary least-squares estimator if the error distribution has a nonzero third moment. However, it lacks robustness against outliers in the data. In this paper, we propose a robust second-order least squares estimator (RSLSE) against X-outliers. The RSLSE is highly efficient with high breakdown point and is asymptotically normally distributed. We compare the RSLSE with other estimators through a simulation study. Our results show that the RSLSE performs very well.
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页码:371 / 386
页数:15
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