This paper presents a new approach to estimation and inference in panel data models with a multifactor error structure where the unobserved common factors are (possibly) correlated with exogenously given individual-specific regressors, and the factor loadings differ over the cross section units. The basic idea behind the proposed estimation procedure is to filter the individual-specific regressors by means of (weighted) cross-section aggregates such that asymptotically as the cross-section dimension (N) tends to infinity the differential effects of unobserved common factors are eliminated. The estimation procedure has the advantage that it can be computed by OLS applied to an auxiliary regression where the observed regressors are augmented ...
This paper uses Monte Carlo simulations to investigate the impact of nonstationarity, parameter hete...
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...
This paper presents a new approach to estimation and inference in panel data models with unobserved ...
The presence of cross-sectionally correlated error terms invalidates much inferential theory of pane...
This paper introduces the concepts of time-specific weak and strong cross-section dependence, and in...
This paper introduces the concepts of time-specific weak and strong cross-section dependence, and in...
This paper introduces the concepts of time-specific weak and strong cross-section dependence, and in...
This paper introduces the concepts of time-specific weak and strong cross-section dependence, and in...
This paper develops an estimation and testing framework for a stationary large panel model with obse...
This paper considers methods for estimating the slope coefficients in large panel data models that a...
This paper considers methods for estimating the slope coefficients in large panel data models that a...
This paper considers methods for estimating the slope coefficients in large panel data models that a...
This paper develops an estimation and testing framework for a stationary large panel model with obse...
This thesis makes a contribution the econometrics of panel data with cross-section dependence (CSD)....
This paper uses Monte Carlo simulations to investigate the impact of nonstationarity, parameter hete...
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...
This paper presents a new approach to estimation and inference in panel data models with unobserved ...
The presence of cross-sectionally correlated error terms invalidates much inferential theory of pane...
This paper introduces the concepts of time-specific weak and strong cross-section dependence, and in...
This paper introduces the concepts of time-specific weak and strong cross-section dependence, and in...
This paper introduces the concepts of time-specific weak and strong cross-section dependence, and in...
This paper introduces the concepts of time-specific weak and strong cross-section dependence, and in...
This paper develops an estimation and testing framework for a stationary large panel model with obse...
This paper considers methods for estimating the slope coefficients in large panel data models that a...
This paper considers methods for estimating the slope coefficients in large panel data models that a...
This paper considers methods for estimating the slope coefficients in large panel data models that a...
This paper develops an estimation and testing framework for a stationary large panel model with obse...
This thesis makes a contribution the econometrics of panel data with cross-section dependence (CSD)....
This paper uses Monte Carlo simulations to investigate the impact of nonstationarity, parameter hete...
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...