We present properties of a dependence measure that arises in the study of extreme values in multivariate and spatial problems. For multivariate problems the dependence measure characterises dependence at the bivariate level, for all pairs and all higher orders up to and including the dimension of the variable.Necessary and sufficient conditions are given for subsets of dependence measures to be self-consistent, that is to guarantee the existence of a distribution with such a subset of values for the dependence measure. For pairwise dependence, these conditions are given in terms of positive semidefinite matrices and non-differentiable, positive definite functions. We construct new nonparametric estimators for the dependence measure which, u...
Currently available models for spatial extremes suffer either from inflexibility in the dependence s...
Summary. The analysis of extreme values within a stationary time series entails various assumptions ...
This article reviews various characterizations of a multivariate extreme dependence function A(·). T...
We present properties of a dependence measure that arises in the study of extreme values in multivar...
Projection of future extreme events is a major issue in a large number of areas including the enviro...
The spatial extreme value data observed at many sites is usually modelled by a multivariate extreme ...
The statistical theory of extremes is extended to independent multivariate observations that are non...
The traditional approach to multivariate extreme values has been through the multivariate extreme va...
Extreme values of real phenomena are events that occur with low frequency, but can have a large impa...
Multivariate analysis of extreme values has an increasing range of applications in risk analysis, es...
A measure of pairwise extremal dependence for spatial processes, that is marginally invariant, is in...
Multivariate extreme value distributions arise as the limiting joint distribution of normalized comp...
Bivariate extreme value distributions arise as the limiting distributions of renormalized componentw...
Max-stable processes play a fundamental role in modeling the spatial dependence of extremes because ...
• One common way to deal with extreme value analysis in spatial statistics is by using the max-stabl...
Currently available models for spatial extremes suffer either from inflexibility in the dependence s...
Summary. The analysis of extreme values within a stationary time series entails various assumptions ...
This article reviews various characterizations of a multivariate extreme dependence function A(·). T...
We present properties of a dependence measure that arises in the study of extreme values in multivar...
Projection of future extreme events is a major issue in a large number of areas including the enviro...
The spatial extreme value data observed at many sites is usually modelled by a multivariate extreme ...
The statistical theory of extremes is extended to independent multivariate observations that are non...
The traditional approach to multivariate extreme values has been through the multivariate extreme va...
Extreme values of real phenomena are events that occur with low frequency, but can have a large impa...
Multivariate analysis of extreme values has an increasing range of applications in risk analysis, es...
A measure of pairwise extremal dependence for spatial processes, that is marginally invariant, is in...
Multivariate extreme value distributions arise as the limiting joint distribution of normalized comp...
Bivariate extreme value distributions arise as the limiting distributions of renormalized componentw...
Max-stable processes play a fundamental role in modeling the spatial dependence of extremes because ...
• One common way to deal with extreme value analysis in spatial statistics is by using the max-stabl...
Currently available models for spatial extremes suffer either from inflexibility in the dependence s...
Summary. The analysis of extreme values within a stationary time series entails various assumptions ...
This article reviews various characterizations of a multivariate extreme dependence function A(·). T...