Extreme U-statistics arise when the kernel of a U-statistic has a high degree but depends only on its arguments through a small number of top order statistics. As the kernel degree of the U-statistic grows to infinity with the sample size, estimators built out of such statistics form an intermediate family in between those constructed in the block maxima and peaks-over-threshold frameworks in extreme value analysis. The asymptotic normality of extreme U-statistics based on location-scale invariant kernels is established. Although the asymptotic variance corresponds with the one of the Hájek projection, the proof goes beyond considering the first term in Hoeffding’s variance decomposition; instead, a growing number of terms needs to be incor...
International audienceWe revisit the estimation of the extreme value index for randomly censored dat...
One of the major interests in extreme-value statistics is to infer the tail properties of the distri...
International audienceWe address the estimation of extreme level curves of heavy-tailed distribution...
In extreme value statistics, the extreme value index is a well-known parameter to measure the tail h...
In 1948, W. Hoeffding [W. Hoeffding, A class of statistics with asymptotically normal distribution, ...
AbstractIn 1948, W. Hoeffding [W. Hoeffding, A class of statistics with asymptotically normal distri...
Most extreme events in real life can be faithfully modeled as random realizations from a Generalized...
In extreme value statistics, the extreme value index is a well-known parameter to measure the tail h...
AbstractIn extreme value analysis, staring from Smith (1987) [1], the maximum likelihood procedure i...
A large part of the theory of extreme value index estimation is developed for positive extreme value...
We define the extreme values of any random sample of size n from a distribution function F as the ob...
The aim of this paper is to give a formal definition and consistent estimates of the extremes of a p...
Consider a random sample from a bivariate distribution function F in the max-domain of attraction of...
Consider a random sample from a bivariate distribution function F in the max-domain of attraction of...
In this paper we are concerned with the analysis of heavy-tailed data when a portion of the extreme...
International audienceWe revisit the estimation of the extreme value index for randomly censored dat...
One of the major interests in extreme-value statistics is to infer the tail properties of the distri...
International audienceWe address the estimation of extreme level curves of heavy-tailed distribution...
In extreme value statistics, the extreme value index is a well-known parameter to measure the tail h...
In 1948, W. Hoeffding [W. Hoeffding, A class of statistics with asymptotically normal distribution, ...
AbstractIn 1948, W. Hoeffding [W. Hoeffding, A class of statistics with asymptotically normal distri...
Most extreme events in real life can be faithfully modeled as random realizations from a Generalized...
In extreme value statistics, the extreme value index is a well-known parameter to measure the tail h...
AbstractIn extreme value analysis, staring from Smith (1987) [1], the maximum likelihood procedure i...
A large part of the theory of extreme value index estimation is developed for positive extreme value...
We define the extreme values of any random sample of size n from a distribution function F as the ob...
The aim of this paper is to give a formal definition and consistent estimates of the extremes of a p...
Consider a random sample from a bivariate distribution function F in the max-domain of attraction of...
Consider a random sample from a bivariate distribution function F in the max-domain of attraction of...
In this paper we are concerned with the analysis of heavy-tailed data when a portion of the extreme...
International audienceWe revisit the estimation of the extreme value index for randomly censored dat...
One of the major interests in extreme-value statistics is to infer the tail properties of the distri...
International audienceWe address the estimation of extreme level curves of heavy-tailed distribution...