Mean-of-Order-p Location-Invariant Extreme Value Index Estimation

Authors

  • M. Ivette Gomes Universidade de Lisboa
  • Lígia Henriques-Rodrigues Universidade de São Paulo
  • B.G. Manjunath Universidade de Lisboa

DOI:

https://doi.org/10.57805/revstat.v14i3.190

Keywords:

bootstrap and/or heuristic threshold selection, heavy tails, location/scale invariant semi-parametric estimation, Monte-Carlo simulation, optimal levels, statistics of extremes

Abstract

A simple generalisation of the classical Hill estimator of a positive extreme value index (EVI) has been recently introduced in the literature. Indeed, the Hill estimator can be regarded as the logarithm of the mean of order p = 0 of a certain set of statistics. Instead of such a geometric mean, we can more generally consider the mean of order p (MOP) of those statistics, with p real, and even an optimal MOP (OMOP) class of EVI-estimators. These estimators are scale invariant but not location invariant. With PORT standing for peaks over random threshold, new classes of PORT-MOP and PORT-OMOP EVI-estimators are now introduced. These classes are dependent on an extra tuning parameter q, 0 ≤ q < 1, and they are both location and scale invariant, a property also played by the EVI. The asymptotic normal behaviour of those PORT classes is derived. These EVI-estimators are further studied for finite samples, through a Monte-Carlo simulation study. An adequate choice of the tuning parameters under play is put forward, and some concluding remarks are provided.

Published

2016-06-28

How to Cite

Gomes , M. I., Henriques-Rodrigues , L., & Manjunath , B. (2016). Mean-of-Order-p Location-Invariant Extreme Value Index Estimation. REVSTAT-Statistical Journal, 14(3), 273–296. https://doi.org/10.57805/revstat.v14i3.190