In a panel data model with random effects, when autocorrelation in the error is considered, (Gaussian) maximum likelihood estimation produces a dramatically large number of corner solutions: the variance of the random effect appears (incorrectly) to be zero, and a larger autocorrelation is (incorrectly) assigned to the idiosyncratic component. Thus heterogeneity could (incorrectly) be lost in applications to panel data with customarily available time dimension, even in a correctly specified model. The problem occurs in linear as well as nonlinear models. This article aims at pointing out how serious this problem can be (largely neglected by the panel data literature). A set of Monte Carlo experiments is conducted to highlight its relevance,...
This dissertation investigates the interactive or joint influence of autocorrelative processes (auto...
We study the identification of panel models with linear individual-specific coefficients, when T is ...
This paper extends the transformed maximum likelihood approach for estimation of dynamic panel data ...
In a panel data model with random effects, when autocorrelation in the error is considered, (Gaussia...
In this paper we analyse systematically through Monte Carlo simulations the consequences of misspeci...
We analyse the finite sample properties of maximum likelihood estimators for dynamic panel data mode...
The main purpose of this paper is to estimate panel data models with endogenous regressors and nonad...
We analyze the finite sample properties of maximum likelihood estimators for dynamic panel data mode...
ABSTRACT. This paper considers fixed effects estimation and inference in linear and nonlin-ear panel...
In this paper, we propose a robust approach against heteroskedasticity, error serial correlation and...
An exact maximum likelihood method is developed for the estimation of parameters in a nonlinear non-...
We study the biases that are likely to arise in practice with panel data when parameters vary across...
The article discusses statistical inference in parametric models for panel data. The models feature ...
In this paper we provide a new methodology to analyze the (Gaussian) profile quasi likelihood functi...
Microeconomic panel data, also known as longitudinal data or repeated measures, allow the researcher...
This dissertation investigates the interactive or joint influence of autocorrelative processes (auto...
We study the identification of panel models with linear individual-specific coefficients, when T is ...
This paper extends the transformed maximum likelihood approach for estimation of dynamic panel data ...
In a panel data model with random effects, when autocorrelation in the error is considered, (Gaussia...
In this paper we analyse systematically through Monte Carlo simulations the consequences of misspeci...
We analyse the finite sample properties of maximum likelihood estimators for dynamic panel data mode...
The main purpose of this paper is to estimate panel data models with endogenous regressors and nonad...
We analyze the finite sample properties of maximum likelihood estimators for dynamic panel data mode...
ABSTRACT. This paper considers fixed effects estimation and inference in linear and nonlin-ear panel...
In this paper, we propose a robust approach against heteroskedasticity, error serial correlation and...
An exact maximum likelihood method is developed for the estimation of parameters in a nonlinear non-...
We study the biases that are likely to arise in practice with panel data when parameters vary across...
The article discusses statistical inference in parametric models for panel data. The models feature ...
In this paper we provide a new methodology to analyze the (Gaussian) profile quasi likelihood functi...
Microeconomic panel data, also known as longitudinal data or repeated measures, allow the researcher...
This dissertation investigates the interactive or joint influence of autocorrelative processes (auto...
We study the identification of panel models with linear individual-specific coefficients, when T is ...
This paper extends the transformed maximum likelihood approach for estimation of dynamic panel data ...