In simultaneous equations model, two-stage least squares estimator is easy to apply and commonly preferred. When multicollinearity exists, two-stage least squares estimator has some drawbacks and it is no longer favorable. In this context, biased estimation methods are recommended. Two-parameter estimator of Özkale and Kaçıranlar (Commun Stat Theory Methods 36(15):2707–2725, 2007) had been established to be superior to the ordinary least squares estimator under some conditions in linear regression model suffering from multicollinearity. In this paper, the idea of two-parameter estimation in linear regression model is carried out to the simultaneous equations model. For this model, two-stage two-parameter estimator is proposed to remedy the ...
TEZ9981Tez (Yüksek Lisans) -- Çukurova Üniversitesi, Adana, 2016.Kaynakça (s. 52-54) var.xi, 58 s. :...
In this paper we review existing work on robust estimation for simultaneous equations models. Then w...
Multicollinearity is one of the most important issues in regression analysis, as it produces unstabl...
Two stage least squares regression analysis is the most practical statistical technique that is used...
In simultaneous equations model, multicollinearity and status of identification of the equations hav...
Two-stage least squares estimation in a simultaneous equations model has several desirable propertie...
The thesis is concerned with developing a coherent theory of estimation suitable for th...
In this paper various methods for the estimation of simultaneous equation models with lagged endogen...
Bibliography: pages [167]-172.Consider a model of the form shown below: Y = X*B + e where Y is a vec...
used to estimate the parameters of a multi-equation (or simultaneous equations) econometric model wh...
The inefficiency of the ordinary least square estimator for the parameter estimation of a linear reg...
This article introduces semiparametric methods for the estimation of simultaneous equation microe-co...
Multicollinearity has remained a major problem in regression analysis and should be sustainably addr...
We compare four dffierent estimation methods for a coefficient of a linear structural equation with ...
We compare four different estimation methods for a coefficient of a linear structural equation with ...
TEZ9981Tez (Yüksek Lisans) -- Çukurova Üniversitesi, Adana, 2016.Kaynakça (s. 52-54) var.xi, 58 s. :...
In this paper we review existing work on robust estimation for simultaneous equations models. Then w...
Multicollinearity is one of the most important issues in regression analysis, as it produces unstabl...
Two stage least squares regression analysis is the most practical statistical technique that is used...
In simultaneous equations model, multicollinearity and status of identification of the equations hav...
Two-stage least squares estimation in a simultaneous equations model has several desirable propertie...
The thesis is concerned with developing a coherent theory of estimation suitable for th...
In this paper various methods for the estimation of simultaneous equation models with lagged endogen...
Bibliography: pages [167]-172.Consider a model of the form shown below: Y = X*B + e where Y is a vec...
used to estimate the parameters of a multi-equation (or simultaneous equations) econometric model wh...
The inefficiency of the ordinary least square estimator for the parameter estimation of a linear reg...
This article introduces semiparametric methods for the estimation of simultaneous equation microe-co...
Multicollinearity has remained a major problem in regression analysis and should be sustainably addr...
We compare four dffierent estimation methods for a coefficient of a linear structural equation with ...
We compare four different estimation methods for a coefficient of a linear structural equation with ...
TEZ9981Tez (Yüksek Lisans) -- Çukurova Üniversitesi, Adana, 2016.Kaynakça (s. 52-54) var.xi, 58 s. :...
In this paper we review existing work on robust estimation for simultaneous equations models. Then w...
Multicollinearity is one of the most important issues in regression analysis, as it produces unstabl...