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Replication Data for: Transformed-Likelihood Estimators for Dynamic Panel Models with a Very Small T

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NIAID Data Ecosystem2026-03-11 收录
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https://doi.org/10.7910/DVN/YIQKN8
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资源简介:
Conventional OLS fixed-effects and GLS random-effects estimators of dynamic models that control for individual-effects are known to be biased when applied to short panel data (T <= 10). GMM estimators are the most used alternative but are known to have drawbacks. Transformed-likelihood estimators are unused in political science. Of these, orthogonal reparameterization estimators are only tangentially referred to in any discipline. We introduce these estimators and test their performance, demonstrating that the unused orthogonal reparameterization transformed-likelihood estimator in particular performs very well and is an improvement on the commonly used GMM estimators. When T and/or N are small, it provides efficiency gains and overcomes the issues GMM estimators encounter in the estimation of long-run effects when the coefficient on the lagged dependent variable is close to one.
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2020-05-13
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