The effects of non-standard conditions on the application of the Gauss-Markov Theorem are discussed and methods proposed in the literature for dealing with these effects are reviewed. The multicollinearity problem, which is typified by imprecise least squares estimation of parameters in a multiple linear regression and which arises when the vectors of the input or predictor variables are nearly linearly dependent, is focussed upon and a class of alternative biased estimators examined. In particular several members of the class of biased linear estimators or linear transformations of the Gauss-Markov least squares estimator are reviewed. A particular generalized ridge estimator is introduced and its relation to other techniques already exist...
Includes bibliographical references (pages 51-53)In the standard regression technique, ordinary leas...
This paper deals with the problem of multicollinearity in a multiple linear regression model with li...
Gunst and Mason (1976) and Trenkler (1980) have compared several regression estimators with respect ...
During the past years, different kinds of estimators have been proposed as alternatives to the Ordin...
Limitations of the least squares estimators; a teaching perspective.The standard linear regression m...
Least square estimators in multiple linear regressions under multicollinearity become unstable as th...
Multiple linear regression is a widely used statistical method. Its application, especially in the s...
Ridge regression, a form of biased linear estimation, is a more appropriate technique than ordinary ...
Ridge regression, a form of biased linear estimation, is a more appropriate technique than ordinary ...
International audienceThis chapter deals with the multiple linear regression. That is we investigate...
In the multiple linear regression analysis, the ridge regression estimator is often used to address ...
In the multiple linear regression analysis, the ridge regression estimator is often used to address ...
The performances of two biased estimators for the general linear regression model under conditions o...
WOS: 000261655200012The presence of autocorrelation in errors and multicollinearity among the regres...
The general linear regression model has been one of the most frequently used models over the years, ...
Includes bibliographical references (pages 51-53)In the standard regression technique, ordinary leas...
This paper deals with the problem of multicollinearity in a multiple linear regression model with li...
Gunst and Mason (1976) and Trenkler (1980) have compared several regression estimators with respect ...
During the past years, different kinds of estimators have been proposed as alternatives to the Ordin...
Limitations of the least squares estimators; a teaching perspective.The standard linear regression m...
Least square estimators in multiple linear regressions under multicollinearity become unstable as th...
Multiple linear regression is a widely used statistical method. Its application, especially in the s...
Ridge regression, a form of biased linear estimation, is a more appropriate technique than ordinary ...
Ridge regression, a form of biased linear estimation, is a more appropriate technique than ordinary ...
International audienceThis chapter deals with the multiple linear regression. That is we investigate...
In the multiple linear regression analysis, the ridge regression estimator is often used to address ...
In the multiple linear regression analysis, the ridge regression estimator is often used to address ...
The performances of two biased estimators for the general linear regression model under conditions o...
WOS: 000261655200012The presence of autocorrelation in errors and multicollinearity among the regres...
The general linear regression model has been one of the most frequently used models over the years, ...
Includes bibliographical references (pages 51-53)In the standard regression technique, ordinary leas...
This paper deals with the problem of multicollinearity in a multiple linear regression model with li...
Gunst and Mason (1976) and Trenkler (1980) have compared several regression estimators with respect ...