This paper considers a linear panel data model with reduced rank regressors and interactive fixed eff ects. The leading example is a factor model where some of the factors are observed, some others not. Invariance considerations yield a maximal invariant statistic whose density does not depend on incidental parameters. It is natural to consider a likelihood ratio test based on the maximal invariant statistic. Its density can be found by using as a prior the unique invariant distribution for the incidental parameters. That invariant distribution is least favorable and leads to minimax optimality properties. Combining the invariant distribution with a prior for the remaining parameters gives a class of admissible tests. A particular ch...
We address the important practical problem of selecting covariates in mixed linear models when the c...
UnrestrictedThis dissertation contributes to the econometrics of panel data models and their applica...
This paper considers testing a covariance matrix Σ in the high dimensional setting where the dimensi...
This paper considers a linear panel data model with reduced rank regressors and interactive fixed ef...
This paper applies some general concepts in decision theory to a linear panel data model. A simple v...
We investigate the likelihood ratio test for a large block-diagonal covariance matrix with an increa...
AbstractThe null hypothesis that the error vectors in a multivariate linear model are independent is...
In this paper, we use a maximal invariant likelihood (MIL) to construct two likelihood ratio (LR) te...
This paper considers tests of the parameter on endogenous variables in an instrumental variables reg...
Neyman and Scott (1948) define the incidental parameter problem. In panel data with T observations p...
Optimal invariant tests for model discrimination exist when the two models under hypotheses represen...
In this paper, we use a maximal invariant likelihood (MIL) to construct two likelihood ratio (LR) te...
In the context of the linear regression model in which some regression coefficients are of interest ...
This paper considers model selection in nonlinear panel data models where incidental parameters or l...
This paper considers the maximum likelihood estimation of the panel data models with interactive eff...
We address the important practical problem of selecting covariates in mixed linear models when the c...
UnrestrictedThis dissertation contributes to the econometrics of panel data models and their applica...
This paper considers testing a covariance matrix Σ in the high dimensional setting where the dimensi...
This paper considers a linear panel data model with reduced rank regressors and interactive fixed ef...
This paper applies some general concepts in decision theory to a linear panel data model. A simple v...
We investigate the likelihood ratio test for a large block-diagonal covariance matrix with an increa...
AbstractThe null hypothesis that the error vectors in a multivariate linear model are independent is...
In this paper, we use a maximal invariant likelihood (MIL) to construct two likelihood ratio (LR) te...
This paper considers tests of the parameter on endogenous variables in an instrumental variables reg...
Neyman and Scott (1948) define the incidental parameter problem. In panel data with T observations p...
Optimal invariant tests for model discrimination exist when the two models under hypotheses represen...
In this paper, we use a maximal invariant likelihood (MIL) to construct two likelihood ratio (LR) te...
In the context of the linear regression model in which some regression coefficients are of interest ...
This paper considers model selection in nonlinear panel data models where incidental parameters or l...
This paper considers the maximum likelihood estimation of the panel data models with interactive eff...
We address the important practical problem of selecting covariates in mixed linear models when the c...
UnrestrictedThis dissertation contributes to the econometrics of panel data models and their applica...
This paper considers testing a covariance matrix Σ in the high dimensional setting where the dimensi...