peer reviewedThis paper proposes an extension of the standard one-way error components model allowing for heteroscedasticity in both the individual-specific and the general error terms, as well as for unbalanced panel. On the grounds of its computational convenience, its potential efficiency, its robustness to non-normality and its robustness to possible misspecification of the assumed scedastic structure of the data, we argue for estimating this model by Gaussian pseudo-maximum likelihood of order two. Further, we review how, taking advantage of the powerful m-testing framework, the correct specification of the prominent aspects of the model may be tested. We survey potentially useful nested, non-nested, Hausman and information matrix type...
This paper generalizes the one-way error component model from the homoskedastic to the heteroskedast...
This dissertation consists three chapters with a central theme on unobserved heterogeneity in econom...
Since the advent of heteroskedasticity-robust standard errors, several papers have proposed adjustme...
This paper constructs tests for heteroskedasticity in one-way error components models, in line with ...
In this paper, we study maximum likelihood estimation and Lagrange multiplier testing of a one-way e...
In the present paper, a general class of heteroscedastic one-factor models is considered. In these m...
AbstractThe authors study a heteroscedastic partially linear regression model and develop an inferen...
This paper first derives an adaptive estimator when heteroskedasticity is present in the individual ...
The authors study a heteroscedastic partially linear regression model and develop an inferential pro...
The authors study a heteroscedastic partially linear regression model and develop an inferential pro...
This paper proposes a convenient testing procedure designed for detecting, from preliminary (pooled)...
The authors study a heteroscedastic partially linear regression model and develop an inferential pro...
A full heteroscedastic one-way error components model: pseudo-maximum likelihood estimatio
The purpose of this paper is to suggest an estimator which is more efficient than the within-class e...
The assumption of equal variance in the normal regression model is not always appropriate. Cook and...
This paper generalizes the one-way error component model from the homoskedastic to the heteroskedast...
This dissertation consists three chapters with a central theme on unobserved heterogeneity in econom...
Since the advent of heteroskedasticity-robust standard errors, several papers have proposed adjustme...
This paper constructs tests for heteroskedasticity in one-way error components models, in line with ...
In this paper, we study maximum likelihood estimation and Lagrange multiplier testing of a one-way e...
In the present paper, a general class of heteroscedastic one-factor models is considered. In these m...
AbstractThe authors study a heteroscedastic partially linear regression model and develop an inferen...
This paper first derives an adaptive estimator when heteroskedasticity is present in the individual ...
The authors study a heteroscedastic partially linear regression model and develop an inferential pro...
The authors study a heteroscedastic partially linear regression model and develop an inferential pro...
This paper proposes a convenient testing procedure designed for detecting, from preliminary (pooled)...
The authors study a heteroscedastic partially linear regression model and develop an inferential pro...
A full heteroscedastic one-way error components model: pseudo-maximum likelihood estimatio
The purpose of this paper is to suggest an estimator which is more efficient than the within-class e...
The assumption of equal variance in the normal regression model is not always appropriate. Cook and...
This paper generalizes the one-way error component model from the homoskedastic to the heteroskedast...
This dissertation consists three chapters with a central theme on unobserved heterogeneity in econom...
Since the advent of heteroskedasticity-robust standard errors, several papers have proposed adjustme...