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Minimum Divergence,Generalized Empirical Likelihoods,and Higher Order Expansions
Authors:Giuseppe Ragusa
Affiliation:1. Dipartimento di Scienze Economiche e Aziendali , LUISS Guido Carli , Rome , Italy gragusa@luiss.it
Abstract:This article studies the minimum divergence (MD) class of estimators for econometric models specified through moment restrictions. We show that MD estimators can be obtained as solutions to a tractable lower dimensional optimization problem. This problem is similar to the one solved by the generalized empirical likelihood estimators of Newey and Smith (2004 Newey , W. K. , Smith , R. J. ( 2004 ). Higher order properties of GMM and Generalized Empirical Likelihood estimators . Econometrica 72 : 219255 .[Crossref], [Web of Science ®] [Google Scholar]), but it is equivalent to it only for a subclass of divergences. The MD framework provides a coherent testing theory: tests for overidentification and parametric restrictions in this framework can be interpreted as semiparametric versions of Pearson-type goodness of fit tests. The higher order properties of MD estimators are also studied and it is shown that MD estimators that have the same higher order bias as the empirical likelihood (EL) estimator also share the same higher order mean square error and are all higher order efficient. We identify members of the MD class that are not only higher order efficient, but also, unlike the EL estimator, well behaved when the moment restrictions are misspecified.
Keywords:Generalized empirical likelihood  GMM  Higher order efficiency  Minimum divergence  Misspecified models
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