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A revised Cholesky decomposition to combat multicollinearity in multiple regression models
Authors:Saman Babaie-Kafaki  Mahdi Roozbeh
Institution:1. Faculty of Mathematics, Statistics and Computer Science, Semnan University, Semnan, Iransbk@semnan.ac.ir;3. Faculty of Mathematics, Statistics and Computer Science, Semnan University, Semnan, Iran
Abstract:As known, the ordinary least-squares estimator (OLSE) is unbiased and also, has the minimum variance among all the linear unbiased estimators. However, under multicollinearity the estimator is generally unstable and poor in the sense that variance of the regression coefficients may be inflated and absolute values of the estimates may be too large. There are several classes of biased estimators in statistical literature to decrease the effect of multicollinearity in the design matrix. Here, based on the Cholesky decomposition, we propose such an estimator which makes the data to be slightly distorted. The exact risk expressions as well as the biases are derived for the proposed estimator. Also, some results demonstrating superiority of the suggested estimator over OLSE are obtained. Finally, a Monté-Carlo simulation study and a real data application related to acetylene data are presented to support our theoretical discussions.
Keywords:Linear regression  multicollinearity  ordinary least-squares estimator  ridge estimator  Cholesky decomposition
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