There are two difficulties with the implementation of the characteristic function-based estimators. First, the optimal instrument yielding the ML efficiency depends on the unknown probability density function. Second, the need to use a large set of moment conditions leads to the singularity of the covariance matrix. We resolve the two problems in the framework of GMM with a continuum of moment conditions. A new optimal instrument relies on the double indexing and, as a result, has a simple exponential form. The singularity problem is addressed via a penalization term. We introduce HAC-type estimators for non-Markov models. A simulated method of moments is proposed for non-analytical cases. (c) 2006 Elsevier B.V. All rights reserved.
机构:
School of Mathematical and Physical Sciences, University of Newcastle, NSWSchool of Mathematical and Physical Sciences, University of Newcastle, NSW
Nur D.
Nair G.M.
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机构:
Department of Mathematics and Statistics, Curtin University of Technology, Perth, WASchool of Mathematical and Physical Sciences, University of Newcastle, NSW
Nair G.M.
Yatawara N.D.
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机构:
Department of Mathematics and Statistics, Curtin University of Technology, Perth, WASchool of Mathematical and Physical Sciences, University of Newcastle, NSW