The linear panel data estimator proposed by Hausman and Taylor relaxes the hypothesis of exogenous regressors that is assumed by generalized least squares methods but, unlike the Fixed Effects estimator, it can handle endogenous time invariant explanatory variables in the regression equation. One of the assumptions underlying the estimator is the homoskedasticity of the error components. This can be restrictive in applications, and therefore in this paper the assumption is relaxed and more efficient adaptive versions of the estimator are presented
This paper studies instrumental variables (IV) estimation for an error component model with stationa...
This paper develops two instrumental variable (IV) estimators for dynamic panel data models with exo...
This paper analyses the instrumental variables (IV) approach put forward by \citet{NorkuteEtal20}, i...
The linear panel data estimator proposed by Hausman and Taylor relaxes the hypothesis of exogenous r...
The linear panel data estimator proposed by Hausman and Taylor relaxes the hypothesis of exogenous r...
This paper first derives an adaptive estimator when heteroskedasticity is present in the individual ...
This dissertation is concerned with the concocting of new adaptive procedures of estimation of linea...
The purpose of this paper is to suggest an estimator which is more efficient than the within-class e...
This paper generalizes the one-way error component model from the homoskedastic to the heteroskedast...
This article proposes a panel data generalization for a recently suggested instrumental variable-fre...
This article proposes a panel data generalization for a recently suggested instrumental variable-fre...
A relevant issue in panel data estimation is heteroskedasticity, which often occurs when the sample ...
A relevant issue in panel data estimation is heteroskedasticity, which often occurs when the sample ...
In this paper, we present an adaptive estimator for panel data model with unknown unit-time varying ...
This paper puts forward a new instrumental variables (IV) approach for linear panel data models with...
This paper studies instrumental variables (IV) estimation for an error component model with stationa...
This paper develops two instrumental variable (IV) estimators for dynamic panel data models with exo...
This paper analyses the instrumental variables (IV) approach put forward by \citet{NorkuteEtal20}, i...
The linear panel data estimator proposed by Hausman and Taylor relaxes the hypothesis of exogenous r...
The linear panel data estimator proposed by Hausman and Taylor relaxes the hypothesis of exogenous r...
This paper first derives an adaptive estimator when heteroskedasticity is present in the individual ...
This dissertation is concerned with the concocting of new adaptive procedures of estimation of linea...
The purpose of this paper is to suggest an estimator which is more efficient than the within-class e...
This paper generalizes the one-way error component model from the homoskedastic to the heteroskedast...
This article proposes a panel data generalization for a recently suggested instrumental variable-fre...
This article proposes a panel data generalization for a recently suggested instrumental variable-fre...
A relevant issue in panel data estimation is heteroskedasticity, which often occurs when the sample ...
A relevant issue in panel data estimation is heteroskedasticity, which often occurs when the sample ...
In this paper, we present an adaptive estimator for panel data model with unknown unit-time varying ...
This paper puts forward a new instrumental variables (IV) approach for linear panel data models with...
This paper studies instrumental variables (IV) estimation for an error component model with stationa...
This paper develops two instrumental variable (IV) estimators for dynamic panel data models with exo...
This paper analyses the instrumental variables (IV) approach put forward by \citet{NorkuteEtal20}, i...