This paper introduces and investigates a new pre-test estimator for the parameter vector of the linear regression model. This estimator is based on two sets of linear restrictions - at least one of them consisting of correct information. The statistical properties of the new estimator with respect to its mean square error matrix are investigated and necessary and sufficient conditions showing the potential dominance of this biased estimator over its competitors are derived
The present paper considers the weighted mixed regression estimation of the coefficient vector in a ...
When the choice of estimator for the coefficients in a linear regression model is determined by the ...
In this paper we derive the exact risk (under quadratic loss) of pretest estimators of the predictio...
AbstractConsider the linear regression model M={y, Xβ, σ2In} and two sets of competing, not necessar...
This paper considers the estimation of a dynamic linear regression model after a pretest of exact li...
We consider the effects of incorrectly assuming a scalar error covariance matrix in a linear regress...
We consider the pre-test estimation of . the parameters of a linear regression model after a prelimi...
A new method for testing linear restrictions in linear regression models is suggested
This thesis considers some finite sample properties of a number of preliminary test (pre-test) estim...
In this paper, we derive the exact risk (under quadratic loss) of pre-test estimators of the predict...
This paper considers the choice of critical value for a pre-test of exact linear restrictions when e...
This thesis investigates the statistical properties of preliminary test estimators of linear models ...
In this paper we compare recently developed preliminary test estimator called Preliminary Test Stoch...
This paper deals with the problem of multicollinearity in a multiple linear regression model with li...
AbstractFour types of biased estimators of thek × 1 coefficient vector in the linear regression mode...
The present paper considers the weighted mixed regression estimation of the coefficient vector in a ...
When the choice of estimator for the coefficients in a linear regression model is determined by the ...
In this paper we derive the exact risk (under quadratic loss) of pretest estimators of the predictio...
AbstractConsider the linear regression model M={y, Xβ, σ2In} and two sets of competing, not necessar...
This paper considers the estimation of a dynamic linear regression model after a pretest of exact li...
We consider the effects of incorrectly assuming a scalar error covariance matrix in a linear regress...
We consider the pre-test estimation of . the parameters of a linear regression model after a prelimi...
A new method for testing linear restrictions in linear regression models is suggested
This thesis considers some finite sample properties of a number of preliminary test (pre-test) estim...
In this paper, we derive the exact risk (under quadratic loss) of pre-test estimators of the predict...
This paper considers the choice of critical value for a pre-test of exact linear restrictions when e...
This thesis investigates the statistical properties of preliminary test estimators of linear models ...
In this paper we compare recently developed preliminary test estimator called Preliminary Test Stoch...
This paper deals with the problem of multicollinearity in a multiple linear regression model with li...
AbstractFour types of biased estimators of thek × 1 coefficient vector in the linear regression mode...
The present paper considers the weighted mixed regression estimation of the coefficient vector in a ...
When the choice of estimator for the coefficients in a linear regression model is determined by the ...
In this paper we derive the exact risk (under quadratic loss) of pretest estimators of the predictio...