Consider n i.i.d. random vectors on ℝ 2, 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 ...
AbstractLet (X1, Y1), (X2, Y2),…, (Xn, Yn) be a random sample from a bivariate distribution function...
Multivariate extremes behave very differently under asymptotic dependence as compared to asymptotic ...
AbstractIt is well known that a bivariate distribution belongs to the domain of attraction of an ext...
Consider n i.i.d. random vectors on R2, with unknown, common distri-bution function F. Under a sharp...
Consider n i.i.d. random vectors on R2, with unknown, common distribution function F.Under a sharpen...
Nonparametric estimation of tail dependence can be based on a standardization of the marginals if t...
Abstract. Consider n i.i.d. random vectors on R2, with unknown, common distribution function F. Unde...
International audienceThis paper deals with the problem of estimating the tail of a bivariate distri...
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, ...
AbstractA new class of tests of extreme-value dependence for bivariate copulas is proposed. It is ba...
32 pages, 5 figureInternational audienceLet $(X,Y)$ be a bivariate random vector. The estimation of ...
Inference over multivariate tails often requires a number of assumptions which may affect the assess...
Testing weather or not data belongs could been generated by a family of extreme value copulas is dif...
Applications of univariate extreme value theory rely on certain as- sumptions. Recently, two methods...
AbstractLet (X1, Y1), (X2, Y2),…, (Xn, Yn) be a random sample from a bivariate distribution function...
Multivariate extremes behave very differently under asymptotic dependence as compared to asymptotic ...
AbstractIt is well known that a bivariate distribution belongs to the domain of attraction of an ext...
Consider n i.i.d. random vectors on R2, with unknown, common distri-bution function F. Under a sharp...
Consider n i.i.d. random vectors on R2, with unknown, common distribution function F.Under a sharpen...
Nonparametric estimation of tail dependence can be based on a standardization of the marginals if t...
Abstract. Consider n i.i.d. random vectors on R2, with unknown, common distribution function F. Unde...
International audienceThis paper deals with the problem of estimating the tail of a bivariate distri...
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, ...
AbstractA new class of tests of extreme-value dependence for bivariate copulas is proposed. It is ba...
32 pages, 5 figureInternational audienceLet $(X,Y)$ be a bivariate random vector. The estimation of ...
Inference over multivariate tails often requires a number of assumptions which may affect the assess...
Testing weather or not data belongs could been generated by a family of extreme value copulas is dif...
Applications of univariate extreme value theory rely on certain as- sumptions. Recently, two methods...
AbstractLet (X1, Y1), (X2, Y2),…, (Xn, Yn) be a random sample from a bivariate distribution function...
Multivariate extremes behave very differently under asymptotic dependence as compared to asymptotic ...
AbstractIt is well known that a bivariate distribution belongs to the domain of attraction of an ext...