This paper develops a new simulation estimation algorithm that is par-ticularly useful for estimating dynamic panel data models with unobserved endogenous state variables. The new approach can deal with the commonly encountered and widely discussed initial conditions problem, as well as the more general problem of missing state variables at any point during the sample period. Repeated sampling experiments on a dynamic panel data probit model with serially correlated errors indicate that the estimator has good small sam-ple properties and is computationally practical for use with panels of the size that are likely to be encountered in practice
This paper considers nonparametric identification of nonlinear dynamic models for panel data with un...
We study inference on parameters in censored panel data models, where the censoring can depend on bo...
This paper concerns identification and estimation of a finite-dimensional parameter in a panel data-...
This paper develops a new simulation estimation algorithm that is par-ticularly useful for estimatin...
This paper develops a simulation estimation algorithm that is particularly useful for estimating dyn...
This paper develops a new simulation estimation algorithm that is particularly useful for estimating...
This paper develops a simulation estimation algorithm that is particularly useful for estimating dyn...
This article develops a simulation estimation algorithm that is particularly useful for estimating d...
This Chapter reviews the recent literature on dynamic panel data models with a short time span and a...
Longitudinal data are collected over several time periods for the same units and therefore allow for...
This paper introduces two easy to calculate estimators with desirable properties for theautoregressi...
This chapter reviews developments to improve on the poor performance of the standard GMM estimator f...
Simulation estimation in the context of panel data, limited dependent-variable (LDV) models poses fo...
An exact maximum likelihood method is developed for the estimation of parameters in a nonlinear non-...
This paper presents a convenient shortcut method for implement-ing the Heckman estimator of the dyna...
This paper considers nonparametric identification of nonlinear dynamic models for panel data with un...
We study inference on parameters in censored panel data models, where the censoring can depend on bo...
This paper concerns identification and estimation of a finite-dimensional parameter in a panel data-...
This paper develops a new simulation estimation algorithm that is par-ticularly useful for estimatin...
This paper develops a simulation estimation algorithm that is particularly useful for estimating dyn...
This paper develops a new simulation estimation algorithm that is particularly useful for estimating...
This paper develops a simulation estimation algorithm that is particularly useful for estimating dyn...
This article develops a simulation estimation algorithm that is particularly useful for estimating d...
This Chapter reviews the recent literature on dynamic panel data models with a short time span and a...
Longitudinal data are collected over several time periods for the same units and therefore allow for...
This paper introduces two easy to calculate estimators with desirable properties for theautoregressi...
This chapter reviews developments to improve on the poor performance of the standard GMM estimator f...
Simulation estimation in the context of panel data, limited dependent-variable (LDV) models poses fo...
An exact maximum likelihood method is developed for the estimation of parameters in a nonlinear non-...
This paper presents a convenient shortcut method for implement-ing the Heckman estimator of the dyna...
This paper considers nonparametric identification of nonlinear dynamic models for panel data with un...
We study inference on parameters in censored panel data models, where the censoring can depend on bo...
This paper concerns identification and estimation of a finite-dimensional parameter in a panel data-...