The identification and estimation of a semiparametric simultaneous equation model with selectivity have been considered. The identification of structural parameters from reduced form parameters in the semiparametric model requires stronger conditions than the usual rank condition in the classical simultaneous equation model or the parametric simultaneous equation sample selection model with normal disturbances. The necessary order condition for identification in the semiparametric model corresponds to the overidentification condition in the classical model. Semiparametric two-stage estimation methods which generalize the two-stage least squares method and the generalized two-stage least squares method for the parametric model are introduced...
This paper presents a new method for estimation in semiparametric regression models, based on a mode...
We consider the estimation of a semiparametric regression model where data is independently and iden...
. Many models fit this framework, including latent index models with an endogenous regressor and non...
The identification and estimation of a semiparametric simultaneous equation model with selectivity ...
This article introduces semiparametric methods for the estimation of simultaneous equation microe-co...
We present new identification results for a class of nonseparable nonparametric simultaneous equation...
The article is devoted to the interrelation between methods of estimating parameters of simultaneous...
Recently, interest has grown in the use of instrumental variables (IVs) in estimating factor analysi...
Instrumental variables estimation is widely applied in econometrics. To implement the method, it is ...
We compare four different estimation methods for a coefficient of a linear structural equation with ...
Since the proposal of the least absolute shrinkage and selection operator (LASSO) (Tibshirani, 1996)...
A semiparametric two-stage estimation method is proposed for the estimation of sample selection mode...
We compare four dffierent estimation methods for a coefficient of a linear structural equation with ...
The thesis is concerned with developing a coherent theory of estimation suitable for th...
In this paper, we are concerned with how to select significant variables in semiparametric modeling....
This paper presents a new method for estimation in semiparametric regression models, based on a mode...
We consider the estimation of a semiparametric regression model where data is independently and iden...
. Many models fit this framework, including latent index models with an endogenous regressor and non...
The identification and estimation of a semiparametric simultaneous equation model with selectivity ...
This article introduces semiparametric methods for the estimation of simultaneous equation microe-co...
We present new identification results for a class of nonseparable nonparametric simultaneous equation...
The article is devoted to the interrelation between methods of estimating parameters of simultaneous...
Recently, interest has grown in the use of instrumental variables (IVs) in estimating factor analysi...
Instrumental variables estimation is widely applied in econometrics. To implement the method, it is ...
We compare four different estimation methods for a coefficient of a linear structural equation with ...
Since the proposal of the least absolute shrinkage and selection operator (LASSO) (Tibshirani, 1996)...
A semiparametric two-stage estimation method is proposed for the estimation of sample selection mode...
We compare four dffierent estimation methods for a coefficient of a linear structural equation with ...
The thesis is concerned with developing a coherent theory of estimation suitable for th...
In this paper, we are concerned with how to select significant variables in semiparametric modeling....
This paper presents a new method for estimation in semiparametric regression models, based on a mode...
We consider the estimation of a semiparametric regression model where data is independently and iden...
. Many models fit this framework, including latent index models with an endogenous regressor and non...