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Robust estimator to deal with regression models having both continuous and categorical regressors: a simulation study


Citation

A. Talib, Bashar and Midi, Habshah (2009) Robust estimator to deal with regression models having both continuous and categorical regressors: a simulation study. Malaysian Journal of Mathematical Sciences, 3 (2). pp. 161-181. ISSN 1823-8343

Abstract

The Ordinary Least Squares (OLS) method has been the most popular technique for estimating the parameters of the multiple linear regression. However, in the presence of outliers and when the model includes both continuous and categorical (factor) variables, the OLS can result in poor estimates. In this paper we try to introduce an alternative robust method for such a model that is much less influenced by the presence of outliers. A numerical example is presented to compare the performance of the OLS, the Re-weighted Least Squares based on the Robust Distance Least Absolute Value (RLSRDL1), and the Re-weighted Least Squares based on the Robust Distance S/M estimator (RLSRDSM). The latter is the modification of the RDL1. The empirical evidence shows that the performance of the RLSRDSM is fairly close to the RLSRDL1 up to 20% outliers. As the percentage of outliers increases to more than 20%, the RLSRDSM is slightly better than the RLSRDL1. However, the Robust Distance Least Absolute Value (RDL1) estimator posed certain computational problems such as degenerate non-unique solutions while the RLSRDSM do not have such problem.


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Official URL or Download Paper: http://einspem.upm.edu.my/journal/volume3.2.php

Additional Metadata

Item Type: Article
Divisions: Faculty of Science
Institute for Mathematical Research
Publisher: Universiti Putra Malaysia Press
Keywords: Outliers; Leverage points; Robust distance; S/M-estimates; RLSRDL1; RLSRDSM
Depositing User: Najwani Amir Sariffudin
Date Deposited: 29 Jan 2013 04:57
Last Modified: 27 May 2015 07:22
URI: http://psasir.upm.edu.my/id/eprint/16589
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