This paper extends the balanced loss function to a more general set up. The ordinary least squares and Stein-rule estimators are exposed to this general loss function with quadratic loss structure in a linear regression model. Their risks are derived when the disturbances in the linear regression model are not necessarily normally distributed. The dominance of ordinary least squares and Stein-rule estimators over each other and the effect of departure from normality assumption of disturbances on the risk property is studied
AbstractAdmissibility of linear estimators of a regression coefficient in linear models with and wit...
This paper examines the role of Stein estimation in a linear ultrastructural form of the measurement...
TEZ6065Tez (Doktora) -- Çukurova Üniversitesi, Adana, 2006.Kaynakça (s.73-76) var.ix, 82 s. ; 29 cm....
This paper extends the balanced loss function to a more general set up. The ordinary least squares a...
This paper presents a general loss function under quadratic loss structure and discusses the compari...
In regression analysis we are often interested in using an estimator which is "precise" and which si...
Under a balanced loss function, we derive the explicit formulae of the risk of the Stein-rule (SR) e...
The paper investigates the effects of misspecifying the disturbances in a linear regression model as...
Choosing the performance criterion to be mean squared error matrix, we have compared the least squar...
We derive the optimal heterogeneous, homogeneous and homogeneous unbiased estimators of the coeffici...
Considering a linear regression model subject to a set of linear restrictions binding the coefficien...
253 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1985.Much work on the James-Stein ...
Choosing the performance criterion to be mean squared error matrix, we have compared the least squar...
AbstractThis paper examines the role of Stein estimation in a linear ultrastructural form of the mea...
This article considers a linear regression model when a set of exact linear restrictions binding the...
AbstractAdmissibility of linear estimators of a regression coefficient in linear models with and wit...
This paper examines the role of Stein estimation in a linear ultrastructural form of the measurement...
TEZ6065Tez (Doktora) -- Çukurova Üniversitesi, Adana, 2006.Kaynakça (s.73-76) var.ix, 82 s. ; 29 cm....
This paper extends the balanced loss function to a more general set up. The ordinary least squares a...
This paper presents a general loss function under quadratic loss structure and discusses the compari...
In regression analysis we are often interested in using an estimator which is "precise" and which si...
Under a balanced loss function, we derive the explicit formulae of the risk of the Stein-rule (SR) e...
The paper investigates the effects of misspecifying the disturbances in a linear regression model as...
Choosing the performance criterion to be mean squared error matrix, we have compared the least squar...
We derive the optimal heterogeneous, homogeneous and homogeneous unbiased estimators of the coeffici...
Considering a linear regression model subject to a set of linear restrictions binding the coefficien...
253 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1985.Much work on the James-Stein ...
Choosing the performance criterion to be mean squared error matrix, we have compared the least squar...
AbstractThis paper examines the role of Stein estimation in a linear ultrastructural form of the mea...
This article considers a linear regression model when a set of exact linear restrictions binding the...
AbstractAdmissibility of linear estimators of a regression coefficient in linear models with and wit...
This paper examines the role of Stein estimation in a linear ultrastructural form of the measurement...
TEZ6065Tez (Doktora) -- Çukurova Üniversitesi, Adana, 2006.Kaynakça (s.73-76) var.ix, 82 s. ; 29 cm....