The Comparison Between Different Approaches to Overcome the Multicollinearity Problem in Linear Regression Models
Author(s) -
Hazim Mansoor Gorgees,
Fatimah Assim Mahdi
Publication year - 2018
Publication title -
ibn al- haitham journal for pure and applied science
Language(s) - English
Resource type - Journals
eISSN - 2521-3407
pISSN - 1609-4042
DOI - 10.30526/31.1.1841
Subject(s) - multicollinearity , collinearity , estimator , principal component regression , ordinary least squares , mathematics , ridge , statistics , mean squared error , estimation theory , principal component analysis , linear regression , paleontology , biology
In the presence of multi-collinearity problem, the parameter estimation method based on the ordinary least squares procedure is unsatisfactory. In 1970, Hoerl and Kennard insert analternative method labeled as estimator of ridge regression. In such estimator, ridge parameter plays an important role in estimation. Various methods were proposed by many statisticians to select the biasing constant (ridge parameter). Another popular method that is used to deal with the multi-collinearity problem is the principal component method. In this paper,we employ the simulation technique to compare the performance of principal component estimator with some types of ordinary ridge regression estimators based on the value of the biasing constant (ridge parameter). The mean square error (MSE) is used as a criterion to assess the performance of such estimators.
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