Using Implied Probabilities to Improve the Estimation of Unconditional Moment Restrictions for Weakly Dependent Data |
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Authors: | Alain Guay Florian Pelgrin |
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Affiliation: | 1. University of Quebec at Montreal (UQAM), CIRPéE, CIREQ, and L.E.A.D., Montreal Quebec, Canada;2. EDHEC Business School, Paris, France |
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Abstract: | In this article, we investigate the use of implied probabilities (Back and Brown, 1993) to improve estimation in unconditional moment conditions models. Using the seminal contributions of Bonnal and Renault (2001 Bonnal, H., Renault, E. (2001). Minimal Chi-Square Estimation with Conditional Moment Restrictions, Document de Travail, CESG, September 2001. [Google Scholar]) and Antoine et al. (2007 Antoine, B., Bonnal, H., Renault, E. (2007). On the efficient use of the informational content of estimating equations: Implied probabilities and euclidean empirical likelihood. Journal of Econometrics 138(2):461–487.[Crossref], [Web of Science ®] , [Google Scholar]), we propose two three-step Euclidian empirical likelihood (3S-EEL) estimators for weakly dependent data. Both estimators make use of a control variates principle that can be interpreted in terms of implied probabilities in order to achieve higher-order improvements relative to the traditional two-step GMM estimator. A Monte Carlo study reveals that the finite and large sample properties of the three-step estimators compare favorably to the existing approaches: the two-step GMM and the continuous updating estimator. |
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Keywords: | Generalized method of moments Implied probabilities Information-based inference Linear rational expectation models |
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