ABSTRACT
This paper investigates a class of location invariant non-positive moment-type estimators of extreme value index, which is highly flexible due to the tuning parameter involved. Its asymptotic expansions and its optimal sample fraction in terms of minimal asymptotic mean square error are derived. A small scale Monte Carlo simulation turns out that the new estimators, with a suitable choice of the tuning parameter driven by the data itself, perform well compared to the known ones. Finally, the proposed estimators with a bootstrap optimal sample fraction are applied to an environmental data set.
MATHEMATICS SUBJECT CLASSIFICATION:
Acknowledgments
The authors would like to thank Zuoxiang Peng and Enkelejd Hashorva for useful discussions.