The Modified Robust Within Group GM-Estimators for the Fixed Effect Panel Data Model
Block concentrated high leverage points (HLPs) are known to have profound effect on the linear fixed effect regression parameter estimation. They cause heavy contamination and produce bias estimates which lead to wrong analysis and conclusions. Thus, robust regression estimators are introduced to...
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Main Authors: | , |
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Format: | Conference or Workshop Item |
Language: | English |
Published: |
2016
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Subjects: | |
Online Access: | http://eprints.unisza.edu.my/565/1/FH03-FESP-19-22908.pdf http://eprints.unisza.edu.my/565/ |
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Institution: | Universiti Sultan Zainal Abidin |
Language: | English |
Summary: | Block concentrated high leverage points (HLPs) are known to have profound effect on the linear
fixed effect regression parameter estimation. They cause heavy contamination and produce bias
estimates which lead to wrong analysis and conclusions. Thus, robust regression estimators are
introduced to the panel data to provide resistant estimates towards HLPs. Two Robust Within
Group GM-estimators (RWGM) are proposed by incorporating two different outlier detection
methods; Deleted Robust Generalized Potential (DRGP) and Robust Diagnostic-F (RDF), in the
GM-estimator. DRGP and RDF are considered in the study due to their superior abilities to
detect outliers correctly in panel data. The performances of the newly proposed methods that we
called RWGM-DRGP and RWGM-RDF are studied under two different types of robust
centering procedures. The performance of each method is evaluated under Monte Carlo
simulations and comparisons are made with the existing RWGM estimator based on Robust
Mahalanobis Distances (RMD) by calculating the ratios of root mean square error. The proposed
estimators are found to be resilient towards high leverage points due to the success of the
weighting schemes by the more superior outlier detection techniques. The results are confirmed
through reanalyzing numerical examples. |
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