Bias Reduction in Dynamic Panel Data Models by Common Recursive Mean Adjustment
The within-group estimator (same as the least squares dummy variable estimator) of the dominant root in dynamic panel regression is known to be biased downwards. This article studies recursive mean adjustment (RMA) as a strategy to reduce this bias for AR("p") processes that may exhibit cross-sectional dependence. Asymptotic properties for "N","T"→∞ jointly are developed. When ( log -super-2"T")("N"/"T")→"ζ", where "ζ" is a non-zero constant, the estimator exhibits nearly negligible inconsistency. Simulation experiments demonstrate that the RMA estimator performs well in terms of reducing bias, variance and mean square error both when error terms are cross-sectionally independent and when they are not. RMA dominates comparable estimators when "T" is small and/or when the underlying process is persistent. Copyright (c) Blackwell Publishing Ltd and the Department of Economics, University of Oxford, 2010.
Year of publication: |
2010
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Authors: | Choi, Chi-Young ; Mark, Nelson C. ; Sul, Donggyu |
Published in: |
Oxford Bulletin of Economics and Statistics. - Department of Economics, ISSN 0305-9049. - Vol. 72.2010, 5, p. 567-599
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Publisher: |
Department of Economics |
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