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research article

Strong convergence of multivariate maxima

Falk, Michael
•
Padoan, Simone A.
•
Rizzelli, Stefano  
March 1, 2020
Journal Of Applied Probability

It is well known and readily seen that the maximum of n independent and uniformly on [0, 1] distributed random variables, suitably standardised, converges in total variation distance, as n increases, to the standard negative exponential distribution. We extend this result to higher dimensions by considering copulas. We show that the strong convergence result holds for copulas that are in a differential neighbourhood of a multivariate generalised Pareto copula. Sklar's theorem then implies convergence in variational distance of the maximum of n independent and identically distributed random vectors with arbitrary common distribution function and (under conditions on the marginals) of its appropriately normalised version. We illustrate how these convergence results can be exploited to establish the almost-sure consistency of some estimation procedures for max-stable models, using sample maxima.

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Type
research article
DOI
10.1017/jpr.2019.100
Web of Science ID

WOS:000530106500018

Author(s)
Falk, Michael
Padoan, Simone A.
Rizzelli, Stefano  
Date Issued

2020-03-01

Publisher

CAMBRIDGE UNIV PRESS

Published in
Journal Of Applied Probability
Volume

57

Issue

1

Start page

314

End page

331

Subjects

Statistics & Probability

•

Mathematics

•

maxima

•

strong convergence

•

total variation

•

copula

•

generalised pareto copula

•

d-norm

•

multivariate max-stable distribution

•

domain of attraction

•

block maxima

•

estimators

•

rates

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
STAT  
Available on Infoscience
May 16, 2020
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/168777
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