Discriminating Between Ordinary Least Squares Estimation Method and Some Robust Estimation Regression Methods

Author:

Idowu Badmus Nofiu1,Kayode Ogundeji Rotimi1

Affiliation:

1. Department of Statistics University of Lagos, Akoka, NIGERIA

Abstract

The lack of certain assumptions is common in ordinary least squares regression models whenever there is/are outliers and high leverage in the observations with an extreme value on a predictor variable. This could have a great effect on the estimate of regression coefficients. However, this research investigates the performance of the ordinary least squares estimator method and some robust regression methods which include: M-Huber, M-Bisquare, MM, and M-Hampel estimator methods. This study applies both methods to a secondary data set with 28 years (from 1900 to 2021) 200 meter races Summer Olympic Games with a response variable (sprint time) and three predictor variables (age, weight, and height) for illustration. Also, linearity, homoscedasticity, independence, and normality assumptions based on diagnostics regression like residual, normal Q-Q, scale-location, and cook’s distance were checked. Then, the results obtained show that the robust regression methods are more efficient than the ordinary least square estimator method.

Publisher

World Scientific and Engineering Academy and Society (WSEAS)

Reference22 articles.

1. Ogundeji, R. K, Onyeka-Ubaka, J. N. and Yinusa, E. (2022). Comparative Study of Bayesian and Ordinary Least Squares Approaches. Unilag Journal of Mathematics and Applications. ISSN: 2805 3966. Vol 2 (1) pp. 60 – 73.

2. Verardi, V. and Croux, C. (2009). Robust regression in Stata. The Stata Journal, 3:439–453.

3. Fox, J. and Weisberg, S. (2010). An appendix to an r companion to applied regression second edition. 1–17.

4. Cetin, M. and Toka, O. (2011). The comparison of s-estimator and m-estimators in linear regression. Gazi University Journal of Science, 24(4):747–752.

5. AL-Noor, H. N. and Mohammad, A. (2013). Model of robust regression with parametric and nonparametric methods. Mathematical Theory and Modeling, 3:27–39.

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