Research Article Open Access

MODEL SELECTION VIA ROBUST VERSION OF R-SQUARED

Shokrya Saleh1
  • 1 University of Malaya, Malaysia

Abstract

R-squared (R2) is a popular method for variable selection in linear regression models. R2 based on Least Squares (LS) regression minimizes the sum of the squared residuals; LS is sensitive to outlier observation. Alternative criterion based on M-estimators, which is less sensitive to outlying observation has been proposed. In this study explicit expression for such criterion is obtained when the Least Trimmed Squares (LTS) estimator is used. The influence function of R2 is also discussed. In our simulation study, the performance of proposed criterion is compared to the existing criteria based on M-estimators (R2M) and to the classical non-robust based on least squares estimators (R2LS). We observe that the proposed (R2LTS) selects more appropriate models in the case of bad leverage points (outliers in the X-direction) are present.

Journal of Mathematics and Statistics
Volume 10 No. 3, 2014, 414-420

DOI: https://doi.org/10.3844/jmssp.2014.414.420

Submitted On: 5 June 2014 Published On: 9 October 2014

How to Cite: Saleh, S. (2014). MODEL SELECTION VIA ROBUST VERSION OF R-SQUARED. Journal of Mathematics and Statistics, 10(3), 414-420. https://doi.org/10.3844/jmssp.2014.414.420

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Keywords

  • Robust R2-Coefficents
  • Least Trimmed Squares
  • Influence Function