A large part of the theory of extreme value index estimation is developed for positive extreme value indices. The best-known estimator of a positive extreme value index is probably the Hill estimator. This estimator belongs to the category of moment estimators, but can also be interpreted as a quasi-maximum likelihood estimator. It has been generalized to a kernel-type estimator, but this kernel-type estimator can, similarly to the Hill estimator, only be used for the estimation of positive extreme value indices. In the present paper, we introduce kernel-type estimators which can be used for estimating the extreme value index over the whole (positive and negative) range. We present a number of results on their distributional behavior and co...
International audienceAn important parameter in extreme value theory is the extreme value index $\ga...
In this article, we deal with semi-parametric corrected-bias estimation of a positive extreme value ...
International audienceThis paper presents new approaches for the estimation of the extreme value ind...
A large part of the theory of extreme value index estimation is developed for positive extreme value...
In extreme value statistics, the extreme value index is a well-known parameter to measure the tail h...
Extreme-value theory and corresponding analysis is an issue extensively applied in many different fi...
The key issue of extreme-value theory is the estimation of a parameter γ, known as extreme value ind...
Extreme-value theory and corresponding analysis is an issue extensively applied in many different fi...
In extreme value statistics, the extreme value index is a well-known parameter to measure the tail h...
A new promising extreme value index estimator, the mixed-moment (MM) estimator, has been recently in...
A new class of estimators of the extreme value index is developed. It has a simple form and is asymp...
We prove asymptotic normality of the so-called maximum likelihood estimator of the extreme value ind...
One of the main goal of extreme value analysis is to estimate the probability of rare events given a...
Extreme U-statistics arise when the kernel of a U-statistic has a high degree but depends only on it...
Abstract: In this note we deal with the estimation, under a semi-parametric framework, of a negative...
International audienceAn important parameter in extreme value theory is the extreme value index $\ga...
In this article, we deal with semi-parametric corrected-bias estimation of a positive extreme value ...
International audienceThis paper presents new approaches for the estimation of the extreme value ind...
A large part of the theory of extreme value index estimation is developed for positive extreme value...
In extreme value statistics, the extreme value index is a well-known parameter to measure the tail h...
Extreme-value theory and corresponding analysis is an issue extensively applied in many different fi...
The key issue of extreme-value theory is the estimation of a parameter γ, known as extreme value ind...
Extreme-value theory and corresponding analysis is an issue extensively applied in many different fi...
In extreme value statistics, the extreme value index is a well-known parameter to measure the tail h...
A new promising extreme value index estimator, the mixed-moment (MM) estimator, has been recently in...
A new class of estimators of the extreme value index is developed. It has a simple form and is asymp...
We prove asymptotic normality of the so-called maximum likelihood estimator of the extreme value ind...
One of the main goal of extreme value analysis is to estimate the probability of rare events given a...
Extreme U-statistics arise when the kernel of a U-statistic has a high degree but depends only on it...
Abstract: In this note we deal with the estimation, under a semi-parametric framework, of a negative...
International audienceAn important parameter in extreme value theory is the extreme value index $\ga...
In this article, we deal with semi-parametric corrected-bias estimation of a positive extreme value ...
International audienceThis paper presents new approaches for the estimation of the extreme value ind...