Wetackle the modeling of threshold exceedances in asymptotically independent stochastic processes by constructions based on Laplace random fields. Defined as mixtures of Gaussian random fields with an exponential variable embedded for the variance, these processes possess useful asymptotic properties while remaining statistically convenient. Univariate Laplace distribution tails are part of the limiting generalized Pareto distributions for threshold exceedances. After normalizing marginal distributions in data, a standard Laplace field can be used to capture spatial dependence among extremes. Asymptotic properties of Laplace fields are explored and compared to the classical framework of asymptotic dependence. Multivariate joint tail decay r...
Generalized Pareto distributions with positive tail index arise from embedding a Gamma random variab...
Skew Laplace distributions, which naturally arise in connection with random summation and quantile r...
We consider the Gumbel or extreme value statistics describing the distribution function pG(νmax) of ...
The statistical modeling of space-time extremes in environmental applications is key to understandin...
This work focuses on statistical methods to understand how frequently rare events occur and what the...
The conditional extremes framework allows for event-based stochastic modeling of dependent extremes,...
International audienceThe statistical modeling of space-time extremes in environmental applications ...
Extreme-value theory is the branch of statistics concerned with modelling the joint tail of a multiv...
By considering pointwise maxima of independent stationary random processes with dependent Cauchy mar...
AbstractDe Haan and Pereira (2006) [6] provided models for spatial extremes in the case of stationar...
Max-stable processes arise as the only possible nontrivial limits for maxima of affinely normalized ...
Projection of future extreme events is a major issue in a large number of areas including the enviro...
AbstractMultivariate Laplace distribution is an important stochastic model that accounts for asymmet...
Multivariate Laplace distribution is an important stochastic model that accounts for asymmetry and h...
International audienceClassical models for multivariate or spatial extremes are mainly based upon th...
Generalized Pareto distributions with positive tail index arise from embedding a Gamma random variab...
Skew Laplace distributions, which naturally arise in connection with random summation and quantile r...
We consider the Gumbel or extreme value statistics describing the distribution function pG(νmax) of ...
The statistical modeling of space-time extremes in environmental applications is key to understandin...
This work focuses on statistical methods to understand how frequently rare events occur and what the...
The conditional extremes framework allows for event-based stochastic modeling of dependent extremes,...
International audienceThe statistical modeling of space-time extremes in environmental applications ...
Extreme-value theory is the branch of statistics concerned with modelling the joint tail of a multiv...
By considering pointwise maxima of independent stationary random processes with dependent Cauchy mar...
AbstractDe Haan and Pereira (2006) [6] provided models for spatial extremes in the case of stationar...
Max-stable processes arise as the only possible nontrivial limits for maxima of affinely normalized ...
Projection of future extreme events is a major issue in a large number of areas including the enviro...
AbstractMultivariate Laplace distribution is an important stochastic model that accounts for asymmet...
Multivariate Laplace distribution is an important stochastic model that accounts for asymmetry and h...
International audienceClassical models for multivariate or spatial extremes are mainly based upon th...
Generalized Pareto distributions with positive tail index arise from embedding a Gamma random variab...
Skew Laplace distributions, which naturally arise in connection with random summation and quantile r...
We consider the Gumbel or extreme value statistics describing the distribution function pG(νmax) of ...