The performances of two biased estimators for the general linear regression model under conditions of collinearity are examined and a new proposed ridge parameter is introduced. Using Mean Square Error (MSE) and Monte Carlo simulation, the resulting estimator’s performance is evaluated and compared with the Ordinary Least Square (OLS) estimator and the Hoerl and Kennard (1970a) estimator. Results of the simulation study indicate that, with respect to MSE criteria, in all cases investigated the proposed estimator outperforms both the OLS and the Hoerl and Kennard estimators
ABSTRACTPresence of collinearity among the explanatory variables results in larger standard errors o...
In this paper we have reviewed some existing and proposed some new estimators for estimating the rid...
WOS:000347016500016In multiple regression analysis, the independent variables should beuncorrelated ...
The performances of two biased estimators for the general linear regression model under conditions o...
One of the main goals of the multiple linear regression model, Y = Xβ + u, is to assess the importan...
One of the main goals of the multiple linear regression model, Y = Xβ + u, is to assess the importan...
Ridge regression, a form of biased linear estimation, is a more appropriate technique than ordinary ...
Least square estimators in multiple linear regressions under multicollinearity become unstable as th...
This paper introduces a new estimator, of ridge parameter k for ridge regression and then evaluated ...
The ridge estimator for handling multicollinearity problem in linear regression model requires the ...
This paper introduces a new estimator, of ridge parameter k for ridge regression and then evaluated ...
In this paper we review some existing and propose some new estimators for estimating the ridge param...
This paper introduces a new estimator, of ridge parameter k for ridge regression and then evaluated ...
During the past years, different kinds of estimators have been proposed as alternatives to the Ordin...
Ridge estimator in linear regression model requires a ridge parameter, K, of which many have been pr...
ABSTRACTPresence of collinearity among the explanatory variables results in larger standard errors o...
In this paper we have reviewed some existing and proposed some new estimators for estimating the rid...
WOS:000347016500016In multiple regression analysis, the independent variables should beuncorrelated ...
The performances of two biased estimators for the general linear regression model under conditions o...
One of the main goals of the multiple linear regression model, Y = Xβ + u, is to assess the importan...
One of the main goals of the multiple linear regression model, Y = Xβ + u, is to assess the importan...
Ridge regression, a form of biased linear estimation, is a more appropriate technique than ordinary ...
Least square estimators in multiple linear regressions under multicollinearity become unstable as th...
This paper introduces a new estimator, of ridge parameter k for ridge regression and then evaluated ...
The ridge estimator for handling multicollinearity problem in linear regression model requires the ...
This paper introduces a new estimator, of ridge parameter k for ridge regression and then evaluated ...
In this paper we review some existing and propose some new estimators for estimating the ridge param...
This paper introduces a new estimator, of ridge parameter k for ridge regression and then evaluated ...
During the past years, different kinds of estimators have been proposed as alternatives to the Ordin...
Ridge estimator in linear regression model requires a ridge parameter, K, of which many have been pr...
ABSTRACTPresence of collinearity among the explanatory variables results in larger standard errors o...
In this paper we have reviewed some existing and proposed some new estimators for estimating the rid...
WOS:000347016500016In multiple regression analysis, the independent variables should beuncorrelated ...