Many approaches to estimation of panel models are based on an average or integrated likelihood that assigns weights to different values of the individual effects. Fixed effects, random effects, and Bayesian approaches all fall in this category. We provide a characterization of the class of weights (or priors) that produce estimators that are firstorder unbiased. We show that such bias-reducing weights must depend on the data unless an orthogonal reparameterization or an essentially equivalent condition is available. Two intuitively appealing weighting schemes are discussed. We argue that asymptotically valid confidence intervals can be read from the posterior distribution of the common parameters when N and T grow at the same rate. Finally,...
We propose jackknife estimators for nonlinear dynamic panel data models with fixed effects that redu...
ABSTRACT. This paper considers fixed effects estimation and inference in linear and nonlin-ear panel...
Fixed effects estimators of nonlinear panel models can be severely biased due to the incidental para...
Many approaches to estimation of panel models are based on an average or integrated likelihood that ...
Many approaches to estimation of panel models are based on an average or integ-rated likelihood that...
Many approaches to estimation of panel models are based on an average or integ-rated likelihood that...
The purpose of this paper is to review recently developed methods of estimation of nonlinear fixed e...
The fixed effects estimator of panel models can be severely biased because of well-known incidental ...
In many nonlinear panel data models with fixed effects maximum likelihood estimators suffer from the...
Fixed effects estimators of panel models can be severely biased because of the well-known incidental...
The purpose of this paper is to review recently developed bias-adjusted methods of es-timation of no...
We consider estimation and inference for a regression coefficient in panels with interactive fixed e...
This paper introduces two easy to calculate estimators with desirable properties for theautoregressi...
This article describes some potential uses of Bayesian estimation for time-series and panel data mod...
In this paper we consider estimation of nonlinear panel data models that include multiple individual...
We propose jackknife estimators for nonlinear dynamic panel data models with fixed effects that redu...
ABSTRACT. This paper considers fixed effects estimation and inference in linear and nonlin-ear panel...
Fixed effects estimators of nonlinear panel models can be severely biased due to the incidental para...
Many approaches to estimation of panel models are based on an average or integrated likelihood that ...
Many approaches to estimation of panel models are based on an average or integ-rated likelihood that...
Many approaches to estimation of panel models are based on an average or integ-rated likelihood that...
The purpose of this paper is to review recently developed methods of estimation of nonlinear fixed e...
The fixed effects estimator of panel models can be severely biased because of well-known incidental ...
In many nonlinear panel data models with fixed effects maximum likelihood estimators suffer from the...
Fixed effects estimators of panel models can be severely biased because of the well-known incidental...
The purpose of this paper is to review recently developed bias-adjusted methods of es-timation of no...
We consider estimation and inference for a regression coefficient in panels with interactive fixed e...
This paper introduces two easy to calculate estimators with desirable properties for theautoregressi...
This article describes some potential uses of Bayesian estimation for time-series and panel data mod...
In this paper we consider estimation of nonlinear panel data models that include multiple individual...
We propose jackknife estimators for nonlinear dynamic panel data models with fixed effects that redu...
ABSTRACT. This paper considers fixed effects estimation and inference in linear and nonlin-ear panel...
Fixed effects estimators of nonlinear panel models can be severely biased due to the incidental para...