The vanilla method in univariate extreme-value theory consists of fitting the three-parameter Generalized Extreme-Value (GEV) distribution to a sample of block maxima. Despite claims to the contrary, the asymptotic normality of the maximum likelihood estimator has never been established. In this paper, a formal proof is given using a general result on the maximum likelihood estimator for parametric families that are differentiable in quadratic mean but whose supports depend on the parameter. An interesting side result concerns the (lack of) differentiability in quadratic mean of the GEV family
Extreme U-statistics arise when the kernel of a U-statistic has a high degree but depends only on it...
In Chapter 1, we give a brief introduction to univariate extreme value theory. We also discuss the k...
Extreme value theory is about the distributions of very large or very small values in a time series...
The vanilla method in univariate extreme-value theory consists of fitting the three-parameter Genera...
The vanilla method in univariate extreme-value theory consists of fitting the three-parameter Gener...
Summary The three-parameter generalized extreme value distribution arises from classi...
The block maxima method in extreme-value analysis proceeds by fitting an extreme-value distribution ...
AbstractIn extreme value analysis, staring from Smith (1987) [1], the maximum likelihood procedure i...
The generalised extreme value (GEV) distribution is a three parameter family that describes the asym...
The univariate generalized extreme value (GEV) distribution is the most commonly used tool for analy...
We prove asymptotic normality of the so-called maximum likelihood estimator of the extreme value ind...
AbstractThe paper is about the asymptotic properties of the maximum likelihood estimator for the ext...
In this paper, we address possible bias issues in quantile estimation using generalized extreme valu...
In this paper we perform an analytical and numerical study of Extreme Value distributions in discret...
Several parametric families of multivariate extreme value distributions (Hüsler and Reiss 1989, Tawn...
Extreme U-statistics arise when the kernel of a U-statistic has a high degree but depends only on it...
In Chapter 1, we give a brief introduction to univariate extreme value theory. We also discuss the k...
Extreme value theory is about the distributions of very large or very small values in a time series...
The vanilla method in univariate extreme-value theory consists of fitting the three-parameter Genera...
The vanilla method in univariate extreme-value theory consists of fitting the three-parameter Gener...
Summary The three-parameter generalized extreme value distribution arises from classi...
The block maxima method in extreme-value analysis proceeds by fitting an extreme-value distribution ...
AbstractIn extreme value analysis, staring from Smith (1987) [1], the maximum likelihood procedure i...
The generalised extreme value (GEV) distribution is a three parameter family that describes the asym...
The univariate generalized extreme value (GEV) distribution is the most commonly used tool for analy...
We prove asymptotic normality of the so-called maximum likelihood estimator of the extreme value ind...
AbstractThe paper is about the asymptotic properties of the maximum likelihood estimator for the ext...
In this paper, we address possible bias issues in quantile estimation using generalized extreme valu...
In this paper we perform an analytical and numerical study of Extreme Value distributions in discret...
Several parametric families of multivariate extreme value distributions (Hüsler and Reiss 1989, Tawn...
Extreme U-statistics arise when the kernel of a U-statistic has a high degree but depends only on it...
In Chapter 1, we give a brief introduction to univariate extreme value theory. We also discuss the k...
Extreme value theory is about the distributions of very large or very small values in a time series...