Title of article :
Two-Parameter Modified Ridge-Type M-Estimator for Linear Regression Model
Author/Authors :
Lukman, Adewale F Department of Physical Sciences - Landmark University - Omu-Aran - Nigeria , Ayinde, Kayode Department of Statistics - Federal University of Technology - Akure - Nigeria , Golam Kibria, B. M Department of Mathematics and Statistics - Florida International University - Miami - FL - USA , Jegede, Segun L Department of Physical Sciences - Landmark University - Omu-Aran - Nigeria
Pages :
24
From page :
1
To page :
24
Abstract :
The general linear regression model has been one of the most frequently used models over the years, with the ordinary least squares estimator (OLS) used to estimate its parameter. The problems of the OLS estimator for linear regression analysis include that of multicollinearity and outliers, which lead to unfavourable results. This study proposed a two-parameter ridge-type modified M-estimator (RTMME) based on the M-estimator to deal with the combined problem resulting from multicollinearity and outliers. Through theoretical proofs, Monte Carlo simulation, and a numerical example, the proposed estimator outperforms the modified ridge-type estimator and some other considered existing estimators.
Keywords :
Parameter Modified Ridge , Type M-Estimator , Linear Regression Model
Journal title :
The Scientific World Journal
Serial Year :
2020
Full Text URL :
Record number :
2615855
Link To Document :
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