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Combining empirical likelihood and generalized method of moments estimators: Asymptotics and higher order bias
Authors:Roni Israelov  Steven Lugauer
Affiliation:
  • a AQR Capital Management, LLC, United States
  • b Department of Economics, University of Notre Dame, 719 Flanner Hall, Notre Dame, IN 46556, United States
  • Abstract:This paper proposes an estimator combining empirical likelihood (EL) and the generalized method of moments (GMM) by allowing the sample average moment vector to deviate from zero and the sample weights to deviate from n−1. The new estimator may be adjusted through free parameter δ∈(0,1) with GMM behavior attained as δ?0 and EL as δ?1. When the sample size is small and the number of moment conditions is large, the parameter space under which the EL estimator is defined may be restricted at or near the population parameter value. The support of the parameter space for the new estimator may be adjusted through δ. The new estimator performs well in Monte Carlo simulations.
    Keywords:Generalized method of moments   Empirical likelihood
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