Multicollinearity is one of the most important issues in regression analysis, as it produces unstable coefficients’ estimates and makes the standard errors severely inflated. The regression theory is based on specific assumptions concerning the set of error random variables. In particular, when errors are uncorrelated and have a constant variance, the ordinary least squares estimator produces the best estimates among all linear estimators. If, as often happens in reality, these assumptions are not met, other methods might give more efficient estimates and their use is therefore recommendable. In this paper, after reviewing and briefly describing the salient features of the methods, proposed in the literature, to determine and address the mu...
Problem statement: The Least Squares (LS) method has been the most popular technique for estimating ...
In the multiple linear regression analysis, the ridge regression estimator is often used to address ...
Multicollinearity is one of several problems confronting researchers using regression analysis. This...
Multicollinearity is one of the most important issues in regression analysis, as it produces unstabl...
In our work, we explored multicollinearity problem from a complex point of view - from diagnostic me...
Multicollinearity has remained a major problem in regression analysis and should be sustainably addr...
When estimating the parameters in a linear regression model, the method of least squares (L^-norm es...
This study investigated the effects of multicollinearity on the model parameters of the ordinary lea...
In regression, the objective is to explain the variation in one or more response variables, by assoc...
Abstract: Problem statement: Least Squares (LS) method has been the most popular method for estimati...
Abstract In regression, the objective is to explain the variation in one or more response variables,...
Ridge regression is an alternative to ordinary least-squares (OLS) regression. It is believed to be ...
Problem statement: In the presence of multicollinearity, the estimation of parameters in multiple li...
One of the main goals of the multiple linear regression model, Y = Xβ + u, is to assess the importan...
The presence of multicollinearity can induce large variances in the ordinary Least-squares estimates...
Problem statement: The Least Squares (LS) method has been the most popular technique for estimating ...
In the multiple linear regression analysis, the ridge regression estimator is often used to address ...
Multicollinearity is one of several problems confronting researchers using regression analysis. This...
Multicollinearity is one of the most important issues in regression analysis, as it produces unstabl...
In our work, we explored multicollinearity problem from a complex point of view - from diagnostic me...
Multicollinearity has remained a major problem in regression analysis and should be sustainably addr...
When estimating the parameters in a linear regression model, the method of least squares (L^-norm es...
This study investigated the effects of multicollinearity on the model parameters of the ordinary lea...
In regression, the objective is to explain the variation in one or more response variables, by assoc...
Abstract: Problem statement: Least Squares (LS) method has been the most popular method for estimati...
Abstract In regression, the objective is to explain the variation in one or more response variables,...
Ridge regression is an alternative to ordinary least-squares (OLS) regression. It is believed to be ...
Problem statement: In the presence of multicollinearity, the estimation of parameters in multiple li...
One of the main goals of the multiple linear regression model, Y = Xβ + u, is to assess the importan...
The presence of multicollinearity can induce large variances in the ordinary Least-squares estimates...
Problem statement: The Least Squares (LS) method has been the most popular technique for estimating ...
In the multiple linear regression analysis, the ridge regression estimator is often used to address ...
Multicollinearity is one of several problems confronting researchers using regression analysis. This...