The analysis of multiple extreme values aims to describe the stochastic behaviour of observations in the joint upper tail of a distribution function. For instance, being able to simulate multivariate extreme events is convenient for end users who need a large number of random replications of extremes as input of a given complex system to test its sensitivity. The simulation of multivariate extremes is often based on the assumption that the dependence structure, the so-called extremal dependence function, is described by a specific parametric model. We propose a simulation method for sampling bivariate extremes, under the assumption that the extremal dependence function is semiparametric. This yields a flexible tool that can be broadly appli...
The tail of a bivariate distribution function in the domain of attraction of a bi-variate extreme-va...
Nonparametric resampling methods such as Direct Sampling are powerful tools to simulate new datasets...
• This review paper focuses on statistical issues arising in modeling univariate extremes of a rando...
The analysis of multiple extreme values aims to describe the stochastic behaviour of observations in...
Inference over multivariate tails often requires a number of assumptions which may affect the assess...
This work considers various approaches for modelling multivariate extremal events. First we review t...
Summary. Multivariate extreme value theory and methods concern the characterization, estimation and ...
A number of different dependence scenarios can arise in the theory of multivariate extremes, entaili...
Threshold methods for multivariate extreme values are based on the use of asymptotically justified a...
Multivariate extreme value theory and methods concern the characterization, estimation and extrapola...
Multivariate extreme events are typically modelled using multivariate extreme value distributions. U...
Projection of future extreme events is a major issue in a large number of areas including the enviro...
While much effort in the development of statistical methods aims at characterising some properties o...
Extreme-value theory is the branch of statistics concerned with modelling the joint tail of a multiv...
International audienceTo better manage the risks of destructive natural disasters, impact models can...
The tail of a bivariate distribution function in the domain of attraction of a bi-variate extreme-va...
Nonparametric resampling methods such as Direct Sampling are powerful tools to simulate new datasets...
• This review paper focuses on statistical issues arising in modeling univariate extremes of a rando...
The analysis of multiple extreme values aims to describe the stochastic behaviour of observations in...
Inference over multivariate tails often requires a number of assumptions which may affect the assess...
This work considers various approaches for modelling multivariate extremal events. First we review t...
Summary. Multivariate extreme value theory and methods concern the characterization, estimation and ...
A number of different dependence scenarios can arise in the theory of multivariate extremes, entaili...
Threshold methods for multivariate extreme values are based on the use of asymptotically justified a...
Multivariate extreme value theory and methods concern the characterization, estimation and extrapola...
Multivariate extreme events are typically modelled using multivariate extreme value distributions. U...
Projection of future extreme events is a major issue in a large number of areas including the enviro...
While much effort in the development of statistical methods aims at characterising some properties o...
Extreme-value theory is the branch of statistics concerned with modelling the joint tail of a multiv...
International audienceTo better manage the risks of destructive natural disasters, impact models can...
The tail of a bivariate distribution function in the domain of attraction of a bi-variate extreme-va...
Nonparametric resampling methods such as Direct Sampling are powerful tools to simulate new datasets...
• This review paper focuses on statistical issues arising in modeling univariate extremes of a rando...