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Mean-of-order <Emphasis Type="Italic">p</Emphasis> reduced-bias extreme value index estimation under a third-order framework
Authors:Email authorEmail author  M?Ivette?Gomes  Jan?Beirlant  Tertius?de?Wet
Institution:1.CMA and DM, FCT,Universidade Nova de Lisboa,Lisbon,Portugal;2.CEAUL and DEIO, FCUL,Universidade de Lisboa,Lisbon,Portugal;3.KU Leuven,Leuven,Belgium;4.University of the Free State,Bloemfontein,South Africa;5.Stellenbosch University,Stellenbosch,South Africa
Abstract:Reduced-bias versions of a very simple generalization of the ‘classical’ Hill estimator of a positive extreme value index (EVI) are put forward. The Hill estimator can be regarded as the logarithm of the mean-of-order-0 of a certain set of statistics. Instead of such a geometric mean, it is sensible to consider the mean-of-order-p (MOP) of those statistics, with p real. Under a third-order framework, the asymptotic behaviour of the MOP, optimal MOP and associated reduced-bias classes of EVI-estimators is derived. Information on the dominant non-null asymptotic bias is also provided so that we can deal with an asymptotic comparison at optimal levels of some of those classes. Large-scale Monte-Carlo simulation experiments are undertaken to provide finite sample comparisons.
Keywords:
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