This study focuses on the semiparametric-efficient estimation of random effect panel models containing AR(1) disturbances. We also consider such estimators when the effects and regressors are correlated (Hausman and Taylor, 1981). We introduce two semiparametric-efficient estimators that make minimal assumptions on the distribution of the random errors, effects, and the regressors and that provide semiparametric-efficient estimates of the slope parameters and of the effects. Our estimators extend the previous work of Park and Simar (J. Amer. Statist. Assoc. 89 (1994) 929), Park et al. (J. Econometrics 84 (1998) 273), and Adams et al. (J. Business Econom. Statist. 17 (1999) 349). Theoretical derivations are supplemented by Monte Carlo simula...
This paper considers nonparametric estimation of autoregressive panel data models with fixed effects...
This paper develops methodology for semiparametric panel data models in a setting where both the tim...
Semiparametric panel data modelling and statistical inference with fractional stochastic trends, non...
The paper analyzes a number of competing approaches to modeling efficiency in panel studies. The spe...
This paper complements the results of Hausman and Taylor (1981) and Cornwell, Schmidt and Sickles (1...
International audienceWe discuss nonparametric estimation of the distribution function G(x) of the a...
This dissertation covers several topics in estimation and forecasting in panel data models.Chapter o...
In this paper we study identification and estimation of the causal effect of a small change in an en...
We consider a panel data semiparametric partially linear regression model with an unknown vector β o...
This dissertation consists of two chapters, both contributing to the field of econometrics. The cont...
AbstractWe consider a panel data semiparametric partially linear regression model with an unknown ve...
Abstract: I show that a class of fixed effects estimators is reasonably robust for estimating the po...
This paper considers the semiparametric stochastic frontier model with panel data which arises in th...
This paper provides a generalized model for the random-coefficients panel data model where the error...
Andersen (1970) considered the problem of inference on random effects linear models from binary resp...
This paper considers nonparametric estimation of autoregressive panel data models with fixed effects...
This paper develops methodology for semiparametric panel data models in a setting where both the tim...
Semiparametric panel data modelling and statistical inference with fractional stochastic trends, non...
The paper analyzes a number of competing approaches to modeling efficiency in panel studies. The spe...
This paper complements the results of Hausman and Taylor (1981) and Cornwell, Schmidt and Sickles (1...
International audienceWe discuss nonparametric estimation of the distribution function G(x) of the a...
This dissertation covers several topics in estimation and forecasting in panel data models.Chapter o...
In this paper we study identification and estimation of the causal effect of a small change in an en...
We consider a panel data semiparametric partially linear regression model with an unknown vector β o...
This dissertation consists of two chapters, both contributing to the field of econometrics. The cont...
AbstractWe consider a panel data semiparametric partially linear regression model with an unknown ve...
Abstract: I show that a class of fixed effects estimators is reasonably robust for estimating the po...
This paper considers the semiparametric stochastic frontier model with panel data which arises in th...
This paper provides a generalized model for the random-coefficients panel data model where the error...
Andersen (1970) considered the problem of inference on random effects linear models from binary resp...
This paper considers nonparametric estimation of autoregressive panel data models with fixed effects...
This paper develops methodology for semiparametric panel data models in a setting where both the tim...
Semiparametric panel data modelling and statistical inference with fractional stochastic trends, non...