Multicollinearity is one of several problems confronting researchers using regression analysis. This paper examines the regression model when the assumption of independence among Ute independent variables is violated. The basic properties of the least squares approach are examined, the concept of multicollinearity and its consequences on the least squares estimators are explained. The detection of multicollinearity and alternatives for handling the problem are then discussed. The alternative approaches evaluated are variable deletion, restrictions on the parameters, ridge regression and Bayesian estimation
In multiple linear regression analysis, linear dependencies in the regressor variables lead to ill-...
Ridge regression is an alternative to ordinary least-squares (OLS) regression. It is believed to be ...
In regression analysis it is obvious to have a correlation between the response and predictor(s), bu...
Multicollinearity is one of several problems confronting researchers using regression analysis. This...
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...
Multiple regression fits a model to predict a dependent (Y) variable from two or more independent (X...
When the multicollinearity among the independent variables in a regression model is due to the high ...
Abstract: If there is no linear relationship between the regressors, they are said to be orthogonal....
Multicollinearity in linear regression is typically thought of as a problem of large standard errors...
This study investigated the effects of multicollinearity on the model parameters of the ordinary lea...
Abstract In regression, the objective is to explain the variation in one or more response variables,...
One of the main goals of the multiple linear regression model, Y = Xβ + u, is to assess the importan...
In regression, the objective is to explain the variation in one or more response variables, by assoc...
The presence of multicollinearity can induce large variances in the ordinary Least-squares estimates...
In multiple linear regression analysis, linear dependencies in the regressor variables lead to ill-...
Ridge regression is an alternative to ordinary least-squares (OLS) regression. It is believed to be ...
In regression analysis it is obvious to have a correlation between the response and predictor(s), bu...
Multicollinearity is one of several problems confronting researchers using regression analysis. This...
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...
Multiple regression fits a model to predict a dependent (Y) variable from two or more independent (X...
When the multicollinearity among the independent variables in a regression model is due to the high ...
Abstract: If there is no linear relationship between the regressors, they are said to be orthogonal....
Multicollinearity in linear regression is typically thought of as a problem of large standard errors...
This study investigated the effects of multicollinearity on the model parameters of the ordinary lea...
Abstract In regression, the objective is to explain the variation in one or more response variables,...
One of the main goals of the multiple linear regression model, Y = Xβ + u, is to assess the importan...
In regression, the objective is to explain the variation in one or more response variables, by assoc...
The presence of multicollinearity can induce large variances in the ordinary Least-squares estimates...
In multiple linear regression analysis, linear dependencies in the regressor variables lead to ill-...
Ridge regression is an alternative to ordinary least-squares (OLS) regression. It is believed to be ...
In regression analysis it is obvious to have a correlation between the response and predictor(s), bu...