Abstract

<div>Let $X_{1,n} \leq .... \leq X_{n,n}$ be the order statistics associated with a sample $X_{1}, ...., X_{n}$ whose pertaining distribution function (\textit{df}) is $F$. We are concerned with the functional asymptotic behaviour of the sequence of stochastic processes</div><div> </div><div>\begin{equation}<br />T_{n}(f,s)=\sum_{j=1}^{j=k}f(j)\left( \log X_{n-j+1,n}-\log<br />X_{n-j,n}\right)^{s} , \label{fme}<br />\end{equation}</div><div> </div><div>indexed by some classes $\mathcal{F}$ of functions $f:\mathbb{N}%^{\ast}\longmapsto \mathbb{R}_{+}$ and $s \in ]0,+\infty[$ and where $k=k(n)$ satisfies</div><div> </div><div>\begin{equation*}<br />1\leq k\leq n,k/n\rightarrow 0\text{ as }n\rightarrow \infty .<br />\end{equation*}</div><div> </div><div>We show that this is a stochastic process whose margins generate estimators of the extreme value index when $F$ is in the extreme domain of attraction. We focus in this paper on its finite-dimension asymptotic law and provide a class of new estimators of the extreme value index whose performances are compared to analogous ones. The results are next particularized for one explicit class $\mathcal{F}$.</div>

Highlights

  • 1.1 General IntroductionIn this paper, we are concerned with the statistical estimation of the univariate extreme value index of a df F, when it is available

  • We show that this is a stochastic process whose margins generate estimators of the extreme value index when F is in the extreme domain of attraction

  • We focus in this paper on its finite-dimension asymptotic law and provide a class of new estimators of the extreme value index whose performances are compared to analogous ones

Read more

Summary

General Introduction

We are concerned with the statistical estimation of the univariate extreme value index of a df F, when it is available. Rather than doing this by one statistic, we are going to use a stochastic process whose margins generate estimators of the extreme value index (SPMEEXI). To precise this notion, let X1, X2, ... One may use a stochastic process of statistics {Tn( f ), f ∈ F } indexed by F , such that for any fixed f ∈ F , there exists a sequence of nonrandom and positive real coefficients Where 1 is the constant function 1(x) = 1 From this couple of statistics Dekkers et al (1989) deduced the following estimator of the extreme value index.

Motivations and Scope of the Paper
Basics of Extreme Value Theory
Our Results
General Remarks on the Conditions
Best Performance Estimators
Proofs
Simulation Studies
Technical Lemmas
Integral Computations
Minimization of the Asymptotic Variance
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.