Please use this identifier to cite or link to this item: http://hdl.handle.net/10773/35475
Title: A robust version of the FGLS estimator for panel data
Author: Rocha, Anabela
Miranda, M. Cristina
Keywords: FGLS
Panel data
Rrobust estimation
Issue Date: 17-Oct-2021
Publisher: Sociedade Portuguesa e Estatística
Abstract: Panel or longitudinal data sets are frequent in financial and economic studies. This type of data combines cross-sectional with time series data, providing extra information and allowing to evaluate and measure statistical effects that would otherwise keep unknown. Different degree of restrictions upon the structure of the data leads to different ap proaches with least squares methodology. This results in estimators that can be highly affected by a violation of those assumptions. The Feasible Generalized Least Squares estimator (FGLS) is an estimator that pre serves good properties without requiring strong distribution requisites. In spite of this, it is highly affected with the presence of observations too much different from all the rest. These are known as atypical ob servations or outliers. Economical and financial real data often present this type of data and the FGLS estimator may be seriously affected by those observations. This might be avoided if a robust option is chosen. Although robustness is a main concern in recent econometric modelling, there is still much to do in this field. Recent studies in those fields point to the advantage of using robust estimators. With this work we want to contribute to the use of robust methodologies in the estimation of panel data models and present a robust version of FGLS, the RFGLS (Robust Feasible Generalized Least Squares). In this paper, the performance of the proposed estimator is compared with the FGLS using a real data previously analysed by some authors.
Peer review: yes
URI: http://hdl.handle.net/10773/35475
Appears in Collections:ISCA-UA - Comunicações
CIDMA - Comunicações
PSG - Comunicações

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