This paper studies estimation of linear panel regression models with heterogeneous coefficients using a class of weighted least squares estimators, when both the regressors and the error possibly contain a common latent factor structure. Our theory is robust to the specification of such a factor structure because it does not require any information on the number of factors or estimation of the factor structure itself. Moreover, our theory is efficient, in certain circum- stances, because it nests the GLS principle. We first show how our unfeasible weighted-estimator provides a bias-adjusted estimator with the conventional limiting distribution, for situations in which the OLS is affected by a first-order bias. The technical challenge resolv...
The thesis investigates three panel data models. For each model, we tend to use a multifactor struc-...
We consider estimation and inference for a regression coefficient in panels with interactive fixed e...
In different fields of applications including, but not limited to, behavioral, environmental, medica...
This paper studies estimation of linear panel regression models with heterogeneous coefficients usin...
This paper develops an estimation and testing framework for a stationary large panel model with obse...
Abstract This paper develops an estimation and testing framework for a stationary large panel model ...
This paper considers GLS estimation of linear panel models when the innovation and the regressors ca...
This paper considers linear panel data models where the dependence of the regressors and the unobser...
This paper proposes a new instrumental variables approach for con-sistent and asymptotically efficie...
In this paper we provide a new methodology to analyze the (Gaussian) profile quasi likelihood functi...
This paper investigates efficient estimation of heterogeneous coefficients in panel data models with...
My dissertation consists of three chapters that focus on the development of new tools for use with b...
This paper presents a new approach to estimation and inference in panel data models with unobserved ...
We analyse estimation procedures for the panel data models with heterogeneous slopes. Specifically w...
The central theme of this thesis is the development of econometric methods for panel data models. It...
The thesis investigates three panel data models. For each model, we tend to use a multifactor struc-...
We consider estimation and inference for a regression coefficient in panels with interactive fixed e...
In different fields of applications including, but not limited to, behavioral, environmental, medica...
This paper studies estimation of linear panel regression models with heterogeneous coefficients usin...
This paper develops an estimation and testing framework for a stationary large panel model with obse...
Abstract This paper develops an estimation and testing framework for a stationary large panel model ...
This paper considers GLS estimation of linear panel models when the innovation and the regressors ca...
This paper considers linear panel data models where the dependence of the regressors and the unobser...
This paper proposes a new instrumental variables approach for con-sistent and asymptotically efficie...
In this paper we provide a new methodology to analyze the (Gaussian) profile quasi likelihood functi...
This paper investigates efficient estimation of heterogeneous coefficients in panel data models with...
My dissertation consists of three chapters that focus on the development of new tools for use with b...
This paper presents a new approach to estimation and inference in panel data models with unobserved ...
We analyse estimation procedures for the panel data models with heterogeneous slopes. Specifically w...
The central theme of this thesis is the development of econometric methods for panel data models. It...
The thesis investigates three panel data models. For each model, we tend to use a multifactor struc-...
We consider estimation and inference for a regression coefficient in panels with interactive fixed e...
In different fields of applications including, but not limited to, behavioral, environmental, medica...