Consider n i.i.d. random vectors on R2, with unknown, common distribution function F.Under a sharpening of the extreme value condition on F, we derive a weighted approximation of the corresponding tail copula process.Then we construct a test to check whether the extreme value condition holds by comparing two estimators of the limiting extreme value distribution, one obtained from the tail copula process and the other obtained by first estimating the spectral measure which is then used as a building block for the limiting extreme value distribution.We derive the limiting distribution of the test statistic from the aforementioned weighted approximation.This limiting distribution contains unknown functional parameters.Therefore we show that a ...
The core of the classical block maxima method consists of fitting an extreme value distribution to a...
A weighted approximation to the tail empirical distribution function is derived which is suitable fo...
For multivariate distributions in the domain of attraction of a max-stable distribution, the tail co...
Consider n i.i.d. random vectors on R2, with unknown, common distri-bution function F. Under a sharp...
Abstract. Consider n i.i.d. random vectors on R2, with unknown, common distribution function F. Unde...
Weighted approximations of tail copula processes with applications to testing the bivariate extreme ...
Extreme-value copulas arise in the asymptotic theory for componentwise maxima of independent random ...
Let (X1, Y1),…., (Xn, Yn) be an i.i.d. sample from a bivariate distribution function that lies in th...
In this article, we defined and studied a new distribution for modeling extreme value. Some of its m...
Let (X1,Y1),…,(Xn,Yn) be an i.i.d. sample from a bivariate distribution function that lies in the ma...
The extremal dependence behavior of t copulas is examined and their extreme value limiting copulas, ...
Inference on an extreme-value copula usually proceeds via its Pickands dependence function, which is...
AbstractInference on an extreme-value copula usually proceeds via its Pickands dependence function, ...
A number of existing results in the field of multivariate extreme value theory are presented, such a...
There is an infinite number of parameters in the definition of multivariate maxima of moving maxima ...
The core of the classical block maxima method consists of fitting an extreme value distribution to a...
A weighted approximation to the tail empirical distribution function is derived which is suitable fo...
For multivariate distributions in the domain of attraction of a max-stable distribution, the tail co...
Consider n i.i.d. random vectors on R2, with unknown, common distri-bution function F. Under a sharp...
Abstract. Consider n i.i.d. random vectors on R2, with unknown, common distribution function F. Unde...
Weighted approximations of tail copula processes with applications to testing the bivariate extreme ...
Extreme-value copulas arise in the asymptotic theory for componentwise maxima of independent random ...
Let (X1, Y1),…., (Xn, Yn) be an i.i.d. sample from a bivariate distribution function that lies in th...
In this article, we defined and studied a new distribution for modeling extreme value. Some of its m...
Let (X1,Y1),…,(Xn,Yn) be an i.i.d. sample from a bivariate distribution function that lies in the ma...
The extremal dependence behavior of t copulas is examined and their extreme value limiting copulas, ...
Inference on an extreme-value copula usually proceeds via its Pickands dependence function, which is...
AbstractInference on an extreme-value copula usually proceeds via its Pickands dependence function, ...
A number of existing results in the field of multivariate extreme value theory are presented, such a...
There is an infinite number of parameters in the definition of multivariate maxima of moving maxima ...
The core of the classical block maxima method consists of fitting an extreme value distribution to a...
A weighted approximation to the tail empirical distribution function is derived which is suitable fo...
For multivariate distributions in the domain of attraction of a max-stable distribution, the tail co...