We analyze the finite sample properties of maximum likelihood estimators for dynamic panel data models. In particular, we consider Transformed Maximum Likelihood (TML) and Random effects Maximum Likelihood (RML) estimation. We show that TML and RML estimators are solutions to a cubic rst-order condition in the autoregressive parameter. Furthermore, in finite samples both likelihood estimators might lead to a negative estimate of the variance of the individual specic eects. We consider different approaches taking into account the non-negativity restriction for the variance. We show that these approaches may lead to a boundary solution different from the unique global unconstrained maximum. In an extensive Monte Carlo study we find that this ...
This thesis compares the performance of the first-differenced maximum likelihood estimator (FDML) an...
In a panel data model with random effects, when autocorrelation in the error is considered, (Gaussia...
In a panel data model with random effects, when autocorrelation in the error is considered, (Gaussia...
We analyse the finite sample properties of maximum likelihood estimators for dynamic panel data mode...
We analyse the finite sample properties of maximum likelihood estimators for dynamic panel data mode...
We analyse the finite sample properties of maximum likelihood estimators for dynamic panel data mode...
We analyse the finite sample properties of maximum likelihood estimators for dynamic panel data mode...
We analyse the finite sample properties of maximum likelihood estimators for dynamic panel data mode...
We analyse the finite sample properties of maximum likelihood estimators for dynamic panel data mode...
We analyse the finite sample properties of maximum likelihood estimators for dynamic panel data mode...
An exact maximum likelihood method is developed for the estimation of parameters in a nonlinear non-...
A transformed likelihood approach is suggested to estimate fixed effects dynamic panel data models. ...
We develop the panel limited information maximum likelihood (PLIML) approach for estimating dynamic ...
The article discusses statistical inference in parametric models for panel data. The models feature ...
This paper proposes the transformed maximum likelihood estimator for short dynamic panel data models...
This thesis compares the performance of the first-differenced maximum likelihood estimator (FDML) an...
In a panel data model with random effects, when autocorrelation in the error is considered, (Gaussia...
In a panel data model with random effects, when autocorrelation in the error is considered, (Gaussia...
We analyse the finite sample properties of maximum likelihood estimators for dynamic panel data mode...
We analyse the finite sample properties of maximum likelihood estimators for dynamic panel data mode...
We analyse the finite sample properties of maximum likelihood estimators for dynamic panel data mode...
We analyse the finite sample properties of maximum likelihood estimators for dynamic panel data mode...
We analyse the finite sample properties of maximum likelihood estimators for dynamic panel data mode...
We analyse the finite sample properties of maximum likelihood estimators for dynamic panel data mode...
We analyse the finite sample properties of maximum likelihood estimators for dynamic panel data mode...
An exact maximum likelihood method is developed for the estimation of parameters in a nonlinear non-...
A transformed likelihood approach is suggested to estimate fixed effects dynamic panel data models. ...
We develop the panel limited information maximum likelihood (PLIML) approach for estimating dynamic ...
The article discusses statistical inference in parametric models for panel data. The models feature ...
This paper proposes the transformed maximum likelihood estimator for short dynamic panel data models...
This thesis compares the performance of the first-differenced maximum likelihood estimator (FDML) an...
In a panel data model with random effects, when autocorrelation in the error is considered, (Gaussia...
In a panel data model with random effects, when autocorrelation in the error is considered, (Gaussia...