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Estimators obtained by maximizing a likelihood function are studied in the case where the true p.d.f. does not necessarily belong to the family chosen for the likelihood function. When such a procedure is applied to the estimation of the parameters of the first order moments, it is possible to prove a necessary and sufficient condition for its consistency. Asymptotic normality is shown as well as the existence of a lower bound for the asymptotic covariance matrix. It is also seen that this bound can be reached if consistent estimates are available for the parameters of the second order moments. Finally, a necessary and sufficient condition for the consistency if the pseudo maximum likelihood estimation of the first and second moments is given.
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Christian Gouriéroux
University of Toronto
Alain Monfort
National Bureau of Economic Research
Alain Trognon
Interpsy
Econometrica
Centre Pour La Recherche Economique et ses Applications
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Gouriéroux et al. (Tue,) studied this question.
synapsesocial.com/papers/6a125a9492637892a9a659eb — DOI: https://doi.org/10.2307/1913471
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