MARGINAL STANDARDIZATION OF UPPER SEMICONTINUOUS PROCESSES. WITH APPLICATION TO MAX-STABLE PROCESSES

Archive ouverte

Sabourin, Anne | Segers, Johan

Edité par CCSD -

Extreme-value theory for random vectors and stochastic processes with continuous trajectories is usually formulated for random objects all of whose univariate marginal distributions are identical. In the spirit of Sklar's theorem from copula theory, such marginal standardization is carried out by the pointwise probability integral transform. Certain situations, however, call for stochastic models whose trajectories are not continuous but merely upper semicontinuous (usc). Unfortunately, the pointwise application of the probability integral transform to a usc process does in general not preserve the upper semicontinuity of the trajectories. In the present work, we give sufficient conditions for marginal standardization of usc processes to be possible, and we state a partial extension of Sklar's theorem for usc processes. We specialize the results to max-stable processes whose marginal distributions and normalizing sequences are allowed to vary with the coordinate.

Suggestions

Du même auteur

Concentration bounds for the empirical angular measure with statistical learning applications

Archive ouverte | Clémençon, Stéphan | CCSD

International audience. The angular measure on the unit sphere characterizes the first-order dependence structure of the components of a random vector in extreme regions and is defined in terms of standardized margi...

Tails of multivariate archimedean copulas

Archive ouverte | Charpentier, Arthur | CCSD

On the weak convergence of the empirical conditional copula under a simplifying assumption

Archive ouverte | Portier, François | CCSD

Chargement des enrichissements...