Kernel-type estimators for the extreme value index
Groeneboom, P. ; Lopuhaä, H.P. ; Wolf, P.P. de
Ann. Statist., Tome 31 (2003) no. 1, p. 1956-1995 / Harvested from Project Euclid
A large part of the theory of extreme value index estimation is developed for positive extreme value indices. The best-known estimator of a positive extreme value index is probably the Hill estimator. This estimator belongs to the category of moment estimators, but can also be interpreted as a quasi-maximum likelihood estimator. It has been generalized to a kernel-type estimator, but this kernel-type estimator can, similarly to the Hill estimator, only be used for the estimation of positive extreme value indices. In the present paper, we introduce kernel-type estimators which can be used for estimating the extreme value index over the whole (positive and negative) range. We present a number of results on their distributional behavior and compare their performance with the performance of other estimators, such as moment-type estimators for the whole range and the quasi-maximum likelihood estimator, based on the generalized Pareto distribution. We also discuss an automatic bandwidth selection method and introduce a kernel estimator for a second-order parameter, controlling the speed of convergence.
Publié le : 2003-12-14
Classification:  Extreme value index,  adaptive estimation,  second order parameter estimation,  60G70,  62E20,  62G05,  62G20,  62G30
@article{1074290333,
     author = {Groeneboom, P. and Lopuha\"a, H.P. and Wolf, P.P. de},
     title = {Kernel-type estimators for the extreme value index},
     journal = {Ann. Statist.},
     volume = {31},
     number = {1},
     year = {2003},
     pages = { 1956-1995},
     language = {en},
     url = {http://dml.mathdoc.fr/item/1074290333}
}
Groeneboom, P.; Lopuhaä, H.P.; Wolf, P.P. de. Kernel-type estimators for the extreme value index. Ann. Statist., Tome 31 (2003) no. 1, pp.  1956-1995. http://gdmltest.u-ga.fr/item/1074290333/