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The Comparing of S-estimator and M-estimators in linear regression

Year 2011, Volume: 24 Issue: 4, 747 - 752, 16.12.2011

Abstract

In the presence of outliers, least squares estimation is inefficient and can be biased. In the 1980’s several alternatives to M-estimation were proposed as attempts to overcome the lack of resistance. Least Trimmed Squares (LTS) is a viable alternative and is presently the preferred choice of Rousseeuw and Ryan (1997, 2008). Another proposed solution was S-estimation. This method finds a line that minimizes a robust estimate of the scale of the residuals. This method is highly resistant to leverage points, and is robust to outliers in the response. However, this method was also found to be inefficient.

 

The aim of this study is to compare S-estimator with other robust estimators and the least squares estimators and also an example is given to illustrate the efficiency of S-estimator. The data used in this example are the air pollution measures. And finally a simulation study has been presented in this study.

 

Key words: M-estimators, S-estimator, Robust regression, Least median squares ,Air pollution

 

Year 2011, Volume: 24 Issue: 4, 747 - 752, 16.12.2011

Abstract

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Details

Primary Language English
Journal Section Statistics
Authors

Onur Toka

Meral Cetın

Publication Date December 16, 2011
Published in Issue Year 2011 Volume: 24 Issue: 4

Cite

APA Toka, O., & Cetın, M. (2011). The Comparing of S-estimator and M-estimators in linear regression. Gazi University Journal of Science, 24(4), 747-752.
AMA Toka O, Cetın M. The Comparing of S-estimator and M-estimators in linear regression. Gazi University Journal of Science. December 2011;24(4):747-752.
Chicago Toka, Onur, and Meral Cetın. “The Comparing of S-Estimator and M-Estimators in Linear Regression”. Gazi University Journal of Science 24, no. 4 (December 2011): 747-52.
EndNote Toka O, Cetın M (December 1, 2011) The Comparing of S-estimator and M-estimators in linear regression. Gazi University Journal of Science 24 4 747–752.
IEEE O. Toka and M. Cetın, “The Comparing of S-estimator and M-estimators in linear regression”, Gazi University Journal of Science, vol. 24, no. 4, pp. 747–752, 2011.
ISNAD Toka, Onur - Cetın, Meral. “The Comparing of S-Estimator and M-Estimators in Linear Regression”. Gazi University Journal of Science 24/4 (December 2011), 747-752.
JAMA Toka O, Cetın M. The Comparing of S-estimator and M-estimators in linear regression. Gazi University Journal of Science. 2011;24:747–752.
MLA Toka, Onur and Meral Cetın. “The Comparing of S-Estimator and M-Estimators in Linear Regression”. Gazi University Journal of Science, vol. 24, no. 4, 2011, pp. 747-52.
Vancouver Toka O, Cetın M. The Comparing of S-estimator and M-estimators in linear regression. Gazi University Journal of Science. 2011;24(4):747-52.