
arXiv: 1707.02912
AbstractWhile max-stable processes are typically written as pointwise maxima over an infinite number of stochastic processes, in this paper, we consider a family of representations based on ℓp-norms. This family includes both the construction of the Reich–Shaby model and the classical spectral representation by de Haan (1984) as special cases. As the representation of a max-stable process is not unique, we present formulae to switch between different equivalent representations. We further provide a necessary and sufficient condition for the existence of an ℓp-norm-based representation in terms of the stable tail dependence function of a max-stable process. Finally, we discuss several properties of the represented processes such as ergodicity or mixing.
Extreme value theory; extremal stochastic processes, Stable stochastic processes, extreme value theory, Probability (math.PR), FOS: Mathematics, stable tail dependence function, Reich-Shaby model, spectral representation, Mathematics - Probability
Extreme value theory; extremal stochastic processes, Stable stochastic processes, extreme value theory, Probability (math.PR), FOS: Mathematics, stable tail dependence function, Reich-Shaby model, spectral representation, Mathematics - Probability
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