We propose a new integrated likelihood based approach for estimating panel data models when the unobserved individual effects enter the model nonlinearly. Unlike existing integrated likelihoods in the literature, the one we propose is closer to a genuine likelihood. Although the statistical theory for the proposed estimator is developed in an asymptotic setting where the number of individuals and the number of time periods both approach infinity, results from a simulation study suggest that our methodology can work very well even in moderately sized panels of short duration in both static and dynamic models
This paper presents estimation methods for dynamic nonlinear models with correlated random effects (...
This paper considers the maximum likelihood estimation of the panel data models with interactive eff...
Microeconomic panel data, also known as longitudinal data or repeated measures, allow the researcher...
We propose a new integrated likelihood based approach for estimating panel data models when the unob...
I propose a xed eects expectation-maximization (EM) estimator that can be applied to a class of nonl...
The article discusses statistical inference in parametric models for panel data. The models feature ...
The paper proposes two different estimation procedures for nonlinear panel data models with a genera...
An exact maximum likelihood method is developed for the estimation of parameters in a nonlinear non-...
The purpose of this paper is to review recently developed bias-adjusted methods of es-timation of no...
This paper surveys recently developed approaches to analyzing panel data with nonlinear models. We s...
The purpose of this paper is to review recently developed methods of estimation of nonlinear fixed e...
I propose a fixed effects expectation-maximization (EM) estimator that can be applied to a class of ...
Many approaches to estimation of panel models are based on an average or integrated likelihood that ...
AbstractWe derive fixed effects estimators of parameters and average partial effects in (possibly dy...
In this paper we consider estimation of nonlinear panel data models that include multiple individual...
This paper presents estimation methods for dynamic nonlinear models with correlated random effects (...
This paper considers the maximum likelihood estimation of the panel data models with interactive eff...
Microeconomic panel data, also known as longitudinal data or repeated measures, allow the researcher...
We propose a new integrated likelihood based approach for estimating panel data models when the unob...
I propose a xed eects expectation-maximization (EM) estimator that can be applied to a class of nonl...
The article discusses statistical inference in parametric models for panel data. The models feature ...
The paper proposes two different estimation procedures for nonlinear panel data models with a genera...
An exact maximum likelihood method is developed for the estimation of parameters in a nonlinear non-...
The purpose of this paper is to review recently developed bias-adjusted methods of es-timation of no...
This paper surveys recently developed approaches to analyzing panel data with nonlinear models. We s...
The purpose of this paper is to review recently developed methods of estimation of nonlinear fixed e...
I propose a fixed effects expectation-maximization (EM) estimator that can be applied to a class of ...
Many approaches to estimation of panel models are based on an average or integrated likelihood that ...
AbstractWe derive fixed effects estimators of parameters and average partial effects in (possibly dy...
In this paper we consider estimation of nonlinear panel data models that include multiple individual...
This paper presents estimation methods for dynamic nonlinear models with correlated random effects (...
This paper considers the maximum likelihood estimation of the panel data models with interactive eff...
Microeconomic panel data, also known as longitudinal data or repeated measures, allow the researcher...