Abstract In regression, the objective is to explain the variation in one or more response variables, by associating this variation with proportional variation in one or more explanatory variables. A frequent obstacle is that several of the explanatory vari-ables will vary in rather similar ways. As a result, their collective power of explanation is considerably less than the sum of their individual powers. This phenomenon called multicollinearity, is a common problem in regression analysis. Handling multicollinear-ity problem in regression analysis is important because least squares estimations as-sume that predictor variables are not correlated with each other. The performances of ridge regression (RR), principal component regression (PCR)...
A linear regression model defines a linear relationship between two or more random variables. The ra...
The problem of multicollinearity is the most common problem in multiple regression models as in such...
<p class="AbstractText">Multicollinearity is a problem that often occurs in multiple linear regressi...
In regression, the objective is to explain the variation in one or more response variables, by assoc...
In our work, we explored multicollinearity problem from a complex point of view - from diagnostic me...
Regression analysis is an analysis used to determine the effect between the independent variable an...
Multicollinearity has remained a major problem in regression analysis and should be sustainably addr...
The aim of this study is to compare some regression methods in the presence of multicollinearity pro...
Multicollinearity is a major problem in linear regression analysis and several methods exists in the...
In multiple linear regression analysis, linear dependencies in the regressor variables lead to ill-...
Multicollinearity is one of several problems confronting researchers using regression analysis. This...
In regression with near collinear explanatory variables, the least squares predictor has large varia...
Multicollinearity is one of the most important issues in regression analysis, as it produces unstabl...
The presence of multicollinearity can induce large variances in the ordinary Least-squares estimates...
This paper investigates the partial least squares regression (PLSR) and principal component regressi...
A linear regression model defines a linear relationship between two or more random variables. The ra...
The problem of multicollinearity is the most common problem in multiple regression models as in such...
<p class="AbstractText">Multicollinearity is a problem that often occurs in multiple linear regressi...
In regression, the objective is to explain the variation in one or more response variables, by assoc...
In our work, we explored multicollinearity problem from a complex point of view - from diagnostic me...
Regression analysis is an analysis used to determine the effect between the independent variable an...
Multicollinearity has remained a major problem in regression analysis and should be sustainably addr...
The aim of this study is to compare some regression methods in the presence of multicollinearity pro...
Multicollinearity is a major problem in linear regression analysis and several methods exists in the...
In multiple linear regression analysis, linear dependencies in the regressor variables lead to ill-...
Multicollinearity is one of several problems confronting researchers using regression analysis. This...
In regression with near collinear explanatory variables, the least squares predictor has large varia...
Multicollinearity is one of the most important issues in regression analysis, as it produces unstabl...
The presence of multicollinearity can induce large variances in the ordinary Least-squares estimates...
This paper investigates the partial least squares regression (PLSR) and principal component regressi...
A linear regression model defines a linear relationship between two or more random variables. The ra...
The problem of multicollinearity is the most common problem in multiple regression models as in such...
<p class="AbstractText">Multicollinearity is a problem that often occurs in multiple linear regressi...