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Non-Parametric Maximum Likelihood Density Estimation and Simulation-Based Minimum Distance Estimators (1012.3851v2)
Published 17 Dec 2010 in math.ST, math.PR, stat.ME, and stat.TH
Abstract: Indirect inference estimators (i.e., simulation-based minimum distance estimators) in a parametric model that are based on auxiliary non-parametric maximum likelihood density estimators are shown to be asymptotically normal. If the parametric model is correctly specified, it is furthermore shown that the asymptotic variance-covariance matrix equals the inverse of the Fisher-information matrix. These results are based on uniform-in-parameters convergence rates and a uniform-in-parameters Donsker-type theorem for non-parametric maximum likelihood density estimators.