The panel-data regression models are frequently applied to micro-level data, which often suffer from data contamination, erroneous observations, or unobserved heterogeneity. Despite the adverse effects of outliers on classical estimation methods, there are only a few robust estimation methods available for fixed-effect panel data. Aiming at estimation under weak moment conditions, a new estimation approach based on two different data transformation is proposed. Considering several robust estimation methods applied on the transformed data, we derive the finite-sample, robust, and asymptotic properties of the proposed estimators including their breakdown points and asymptotic distribution. The finite-sample performance of the existing and pro...
We consider estimation and inference for a regression coefficient in panels with interactive fixed e...
It is well known that the usual techniques for estimating random and fixed effects panel data models...
A computationally simple bias correction for linear dynamic panel data models is proposed and its as...
The panel-data regression models are frequently applied to micro-level data, which often suffer from...
The panel-data regression models are frequently applied to micro-level data, which often suffer from...
This paper extends an existing outlier-robust estimator of linear dynamic panel data models with fix...
This paper extends an existing outlier-robust estimator of linear dynamic panel data models with fix...
The presence of outlying observations in panel data can affect the classical estimates in a dramatic...
The presence of outlying observations in panel data can affect the classical estimates in a dramatic...
The presence of outlying observations in panel data can affect the classical estimates in a dramatic...
In different fields of applications including, but not limited to, behavioral, environmental, medica...
The Ordinary Least Squares (OLS) is the commonly used method to estimate the parameters of fixed eff...
The presence of outlying observations in panel data can affect the classical estimates in a dramatic...
© 2016 Elsevier B.V. Outlier-robust estimators are proposed for linear dynamic fixed-effect panel da...
We propose outlier-robust estimators for linear dynamic fixed effects panel data models where the nu...
We consider estimation and inference for a regression coefficient in panels with interactive fixed e...
It is well known that the usual techniques for estimating random and fixed effects panel data models...
A computationally simple bias correction for linear dynamic panel data models is proposed and its as...
The panel-data regression models are frequently applied to micro-level data, which often suffer from...
The panel-data regression models are frequently applied to micro-level data, which often suffer from...
This paper extends an existing outlier-robust estimator of linear dynamic panel data models with fix...
This paper extends an existing outlier-robust estimator of linear dynamic panel data models with fix...
The presence of outlying observations in panel data can affect the classical estimates in a dramatic...
The presence of outlying observations in panel data can affect the classical estimates in a dramatic...
The presence of outlying observations in panel data can affect the classical estimates in a dramatic...
In different fields of applications including, but not limited to, behavioral, environmental, medica...
The Ordinary Least Squares (OLS) is the commonly used method to estimate the parameters of fixed eff...
The presence of outlying observations in panel data can affect the classical estimates in a dramatic...
© 2016 Elsevier B.V. Outlier-robust estimators are proposed for linear dynamic fixed-effect panel da...
We propose outlier-robust estimators for linear dynamic fixed effects panel data models where the nu...
We consider estimation and inference for a regression coefficient in panels with interactive fixed e...
It is well known that the usual techniques for estimating random and fixed effects panel data models...
A computationally simple bias correction for linear dynamic panel data models is proposed and its as...