Parametric inference for spatial max-stable processes is difficult since the related likelihoods are unavailable. A composite likelihood approach based on the bivariate distribution of block maxima has been recently proposed. However modeling block maxima is a wasteful approach provided that other information is available. Moreover an approach based on block maxima, typically annual, is unable to take into account the fact that maxima occur or not simultaneously. If time series of, say, daily data are available, then estimation procedures based on exceedances of a high threshold could mitigate such problems. We focus on two approaches for composing likelihoods based on pairs of exceedances. The first one comes from the tail approximation fo...
AbstractMax-stable processes are a natural extension of multivariate extreme value theory important ...
Max-stable processes allow the spatial dependence of extremes to be modelled and quantified, so they...
Recently there has been a lot of effort to model extremes of spatially dependent data. These effort...
Parametric inference for spatial max-stable processes is difficult since the related likelihoods are...
Parametric inference for spatial max-stable processes is difficult since the related likelihoods are...
Parametric max-stable processes are increasingly used to model spatial extremes. Since the dependenc...
The last decade has seen max-stable processes emerge as a common tool for the statistical modeling o...
The choice for parametric techniques in the discussion article is motivated by the claim that for mu...
The analysis of spatial extremes requires the joint modeling of a spatial process at a large number ...
• One common way to deal with extreme value analysis in spatial statistics is by using the max-stabl...
International audienceFor many environmental processes, recent studies have shown that the dependenc...
Max-stable processes arise as the only possible nontrivial limits for maxima of affinely normalized ...
Max-stable processes play a fundamental role in modeling the spatial dependence of extremes because ...
Environmental problems such as floods require statistical analysis that takes into account the compl...
Max-stable processes are increasingly widely used for modelling complex extreme events, but existing...
AbstractMax-stable processes are a natural extension of multivariate extreme value theory important ...
Max-stable processes allow the spatial dependence of extremes to be modelled and quantified, so they...
Recently there has been a lot of effort to model extremes of spatially dependent data. These effort...
Parametric inference for spatial max-stable processes is difficult since the related likelihoods are...
Parametric inference for spatial max-stable processes is difficult since the related likelihoods are...
Parametric max-stable processes are increasingly used to model spatial extremes. Since the dependenc...
The last decade has seen max-stable processes emerge as a common tool for the statistical modeling o...
The choice for parametric techniques in the discussion article is motivated by the claim that for mu...
The analysis of spatial extremes requires the joint modeling of a spatial process at a large number ...
• One common way to deal with extreme value analysis in spatial statistics is by using the max-stabl...
International audienceFor many environmental processes, recent studies have shown that the dependenc...
Max-stable processes arise as the only possible nontrivial limits for maxima of affinely normalized ...
Max-stable processes play a fundamental role in modeling the spatial dependence of extremes because ...
Environmental problems such as floods require statistical analysis that takes into account the compl...
Max-stable processes are increasingly widely used for modelling complex extreme events, but existing...
AbstractMax-stable processes are a natural extension of multivariate extreme value theory important ...
Max-stable processes allow the spatial dependence of extremes to be modelled and quantified, so they...
Recently there has been a lot of effort to model extremes of spatially dependent data. These effort...