International audienceMax-stable processes play an important role as models for spatial extreme events. Their complex structure as the pointwise maximum over an infinite number of random functions makes their simulation difficult. Algorithms based on finite approximations are often inexact and computationally inefficient. We present a new algorithm for exact simulation of a max-stable process at a finite number of locations. It relies on the idea of simulating only the extremal functions, that is, those functions in the construction of a max-stable process that effectively contribute to the pointwise maximum. We further generalize the algorithm by Dieker & Mikosch (2015) for Brown-Resnick processes and use it for exact simulation via the sp...
International audienceFor many environmental processes, recent studies have shown that the dependenc...
This dissertation focuses on the development and analysis of exact simulation algorithms with applic...
Max-stable processes are increasingly widely used for modelling complex extreme events, but existing...
International audienceMax-stable processes play an important role as models for spatial extreme even...
Being the max-analogue of α-stable stochastic processes, max-stable processes form one of the fundam...
The efficiency of simulation algorithms for max-stable processes relies on the choice of the spectra...
Since many environmental processes are spatial in extent, a single extreme event may affect several ...
• One common way to deal with extreme value analysis in spatial statistics is by using the max-stabl...
The last decade has seen max-stable processes emerge as a powerful tool for the statistical modeling...
Max-stable processes allow the spatial dependence of extremes to be modelled and quantified, so they...
Max-stable processes arise as the only possible nontrivial limits for maxima of affinely normalized ...
The last decade has seen max-stable processes emerge as a powerful tool for the statistical modeling...
Max-stable random fields can be viewed as the analogs of Gaussian processes in the world of extreme ...
The extremal coefficient function has been discussed as an analog of the autocovari-ance function fo...
Max-stable processes are widely used to model spatial extremes. These processes exhibit asymptotic d...
International audienceFor many environmental processes, recent studies have shown that the dependenc...
This dissertation focuses on the development and analysis of exact simulation algorithms with applic...
Max-stable processes are increasingly widely used for modelling complex extreme events, but existing...
International audienceMax-stable processes play an important role as models for spatial extreme even...
Being the max-analogue of α-stable stochastic processes, max-stable processes form one of the fundam...
The efficiency of simulation algorithms for max-stable processes relies on the choice of the spectra...
Since many environmental processes are spatial in extent, a single extreme event may affect several ...
• One common way to deal with extreme value analysis in spatial statistics is by using the max-stabl...
The last decade has seen max-stable processes emerge as a powerful tool for the statistical modeling...
Max-stable processes allow the spatial dependence of extremes to be modelled and quantified, so they...
Max-stable processes arise as the only possible nontrivial limits for maxima of affinely normalized ...
The last decade has seen max-stable processes emerge as a powerful tool for the statistical modeling...
Max-stable random fields can be viewed as the analogs of Gaussian processes in the world of extreme ...
The extremal coefficient function has been discussed as an analog of the autocovari-ance function fo...
Max-stable processes are widely used to model spatial extremes. These processes exhibit asymptotic d...
International audienceFor many environmental processes, recent studies have shown that the dependenc...
This dissertation focuses on the development and analysis of exact simulation algorithms with applic...
Max-stable processes are increasingly widely used for modelling complex extreme events, but existing...