This chapter reviews developments to improve on the poor performance of the standard GMM estimator for highly autoregressive panel series. It considers the use of the "system" GMM estimator that relies on relatively mild restrictions on the initial condition process. This system GMM estimator encompasses the GMM estimator based on the non-linear moment conditions available in the dynamic error components model and has substantial asymptotic efficiency gains. Simulations, that include weakly exogenous covariates, find large finite sample biases and very low precision for the standard first differenced estimator. The use of the system GMM estimator not only greatly improves the precision but also greatly reduces the finite sample bias. An app...
The commonly used 1-step and 2-step System GMM estimators for the panel AR(1) model are inconsisten...
The system GMM estimator in dynamic panel data models combines moment conditions for hte differenced...
This paper evaluates the first-differenced maximum likelihood (FDML) and the continuously updating s...
This chapter reviews developments to improve on the poor performance of the standard GMM estimator f...
Estimation of the dynamic error components model is considered using two alternative linear estimato...
The system GMM estimator in dynamic panel data models which combines two moment conditions, i.e., fo...
This paper develops new estimation and inference procedures for dynamic panel data models with fixed...
This thesis compares the performance of the first-differenced maximum likelihood estimator (FDML) an...
This paper is concerned with the estimation of the autoregressive parameter of dynamic panel data mo...
By deriving the finite sample biases, this paper shows analytically why the system GMM estimator in ...
The system GMM estimator for dynamic panel data models combines moment conditions for the model in f...
The system GMM estimator for dynamic panel data models combines moment conditions for the model in f...
This article compares the performance of three recently proposed estimators for dynamic panel data m...
This paper considers first-order autoregressive panel model which is a simple model for dynamic pane...
The system GMM estimator developed by Blundell and Bond (1998) for dynamic panel data models has bee...
The commonly used 1-step and 2-step System GMM estimators for the panel AR(1) model are inconsisten...
The system GMM estimator in dynamic panel data models combines moment conditions for hte differenced...
This paper evaluates the first-differenced maximum likelihood (FDML) and the continuously updating s...
This chapter reviews developments to improve on the poor performance of the standard GMM estimator f...
Estimation of the dynamic error components model is considered using two alternative linear estimato...
The system GMM estimator in dynamic panel data models which combines two moment conditions, i.e., fo...
This paper develops new estimation and inference procedures for dynamic panel data models with fixed...
This thesis compares the performance of the first-differenced maximum likelihood estimator (FDML) an...
This paper is concerned with the estimation of the autoregressive parameter of dynamic panel data mo...
By deriving the finite sample biases, this paper shows analytically why the system GMM estimator in ...
The system GMM estimator for dynamic panel data models combines moment conditions for the model in f...
The system GMM estimator for dynamic panel data models combines moment conditions for the model in f...
This article compares the performance of three recently proposed estimators for dynamic panel data m...
This paper considers first-order autoregressive panel model which is a simple model for dynamic pane...
The system GMM estimator developed by Blundell and Bond (1998) for dynamic panel data models has bee...
The commonly used 1-step and 2-step System GMM estimators for the panel AR(1) model are inconsisten...
The system GMM estimator in dynamic panel data models combines moment conditions for hte differenced...
This paper evaluates the first-differenced maximum likelihood (FDML) and the continuously updating s...