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Bootstrap refinements for QML estimators of the GARCH(1,1) parameters
Authors:Valentina Corradi  Emma M Iglesias
Institution:1. Department of Economics, University of Warwick, Coventry CV4 7AL, UK;2. Department of Economics, Michigan State University, 101 Marshall-Adams Hall, East Lansing, MI 48824-1038, USA
Abstract:This paper reconsiders a block bootstrap procedure for Quasi Maximum Likelihood estimation of GARCH models, based on the resampling of the likelihood function, as proposed by Gonçalves and White 2004. Maximum likelihood and the bootstrap for nonlinear dynamic models. Journal of Econometrics 119, 199–219]. First, we provide necessary conditions and sufficient conditions, in terms of moments of the innovation process, for the existence of the Edgeworth expansion of the GARCH(1,1) estimator, up to the kk-th term. Second, we provide sufficient conditions for higher order refinements for equally tailed and symmetric test statistics. In particular, the bootstrap estimator based on resampling the likelihood has the same higher order improvements in terms of error in the rejection probabilities as those in Andrews 2002. Higher-order improvements of a computationally attractive kk-step bootstrap for extremum estimators. Econometrica 70, 119–162].
Keywords:Block bootstrap  Edgeworth expansion  Higher order refinements  Quasi Maximum Likelihood  GARCH
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