Open Access
VOL. 7 | 2010 Extremes of two-step regression quantiles
Jan Picek, Jan Dienstbier

Editor(s) J. Antoch, M. Hušková, P.K. Sen

Inst. Math. Stat. (IMS) Collect., 2010: 204-214 (2010) DOI: 10.1214/10-IMSCOLL720

Abstract

The article deals with estimators of extreme value index based on two-step regression quantiles in the linear regression model. Two-step regression quantiles can be seen as a possible generalization of the quantile idea and as an alternative to regression quantiles. We derive the approximation of the tail quantile function of errors. Following Drees (1998) we consider a class of smooth functionals of the tail quantile function as a tool for the construction of estimators in the linear regression context. Pickands, maximum likelihood and probability weighted moments estimators are illustrated on simulated data.

Information

Published: 1 January 2010
First available in Project Euclid: 29 November 2010

MathSciNet: MR2808380

Digital Object Identifier: 10.1214/10-IMSCOLL720

Subjects:
Primary: 62G30 , 62G32
Secondary: 62J05

Keywords: extreme value index , R-estimator , tail function , two-step regression quantile

Rights: Copyright © 2010, Institute of Mathematical Statistics

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