We develop a unifying econometric framework for the analysis of heterogeneous panel data models that can account for both spatial dependence and common factors. To tackle the challenging issues of endogeneity due to the spatial lagged term and the correlation between the regressors and factors, we propose the CCEX-IV estimation procedure that approximates factors by the cross-section averages of regressors and deals with the spatial endogeneity using the internal instrumental variables. We develop the individual and Mean Group estimators, and establish their consistency and asymptotic normality. By contrast, the Pooled estimator is shown to be inconsistent in the presence of parameter heterogeneity. Monte Carlo simulations confirm that the ...
This paper considers methods for estimating the slope coefficients in large panel data models that a...
This paper considers the statistical analysis of large panel data sets where even after condi-tionin...
Given the growing availability of large datasets and following recent research trends on multi-dime...
This thesis develops the panel data models that are designed to capture and explain observed comovem...
Econometric panel data exhibit cross-sectional dependence, even after conditioning on appropriate ex...
Spatial econometrics has been an ongoing research \u85eld. Recently, it has been extended to the pan...
In this paper, we focus on forecasting heterogeneous panels in presence of cross-sectional dependenc...
2019-04-09This dissertation contributes to the econometric analysis of cross-sectional dependence in...
This paper investigates the \u85nite sample properties of estimators for spatial dynamic panel model...
This dissertation consists of two essays on the estimation and inference for spatial economic models...
The dynamic general nesting spatial econometric model for spatial panels with common factors is the ...
International audienceEconomic interactions in space and other forms of peer effects now receive con...
This paper considers methods for estimating the slope coefficients in large panel data models that a...
International audienceThis paper focuses on panel data models combining spatial dependence with a ne...
1Econometricians have recently turned towards the problems posed by cross-sectional dependence acros...
This paper considers methods for estimating the slope coefficients in large panel data models that a...
This paper considers the statistical analysis of large panel data sets where even after condi-tionin...
Given the growing availability of large datasets and following recent research trends on multi-dime...
This thesis develops the panel data models that are designed to capture and explain observed comovem...
Econometric panel data exhibit cross-sectional dependence, even after conditioning on appropriate ex...
Spatial econometrics has been an ongoing research \u85eld. Recently, it has been extended to the pan...
In this paper, we focus on forecasting heterogeneous panels in presence of cross-sectional dependenc...
2019-04-09This dissertation contributes to the econometric analysis of cross-sectional dependence in...
This paper investigates the \u85nite sample properties of estimators for spatial dynamic panel model...
This dissertation consists of two essays on the estimation and inference for spatial economic models...
The dynamic general nesting spatial econometric model for spatial panels with common factors is the ...
International audienceEconomic interactions in space and other forms of peer effects now receive con...
This paper considers methods for estimating the slope coefficients in large panel data models that a...
International audienceThis paper focuses on panel data models combining spatial dependence with a ne...
1Econometricians have recently turned towards the problems posed by cross-sectional dependence acros...
This paper considers methods for estimating the slope coefficients in large panel data models that a...
This paper considers the statistical analysis of large panel data sets where even after condi-tionin...
Given the growing availability of large datasets and following recent research trends on multi-dime...