2019
DOI: 10.1080/17442508.2019.1687703
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Spatial risk measures for max-stable and max-mixture processes

Abstract: In this paper, we consider isotropic and stationary max-stable, inverse max-stable and max-mixture processes X = (X(s)) s∈R 2 and the damage function D ν X = |X| ν with 0 < ν < 1/2. We study the quantitative behavior of a risk measure which is the variance of the average of D ν X over a region A ⊂ R 2 . This kind of risk measure has already been introduced and studied for some max-stable processes in [14]. We evaluated the proposed risk measure by a simulation study.

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Cited by 4 publications
(1 citation statement)
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“…}, which may be exploited for pairwise likelihood inference, usually based on high threshold exceedances by censoring low values. This model has been used, e.g., by Bacro et al (2016) and Ahmed et al (2017Ahmed et al ( , 2019, but it has the drawback of being usually quite heavily parametrized and that estimation of the crucial parameter a is difficult. In the next section, we present more parsimonious spatial extreme-value models that can also capture both asymptotic dependence regimes.…”
Section: Asymptotic Dependence Classesmentioning
confidence: 99%
“…}, which may be exploited for pairwise likelihood inference, usually based on high threshold exceedances by censoring low values. This model has been used, e.g., by Bacro et al (2016) and Ahmed et al (2017Ahmed et al ( , 2019, but it has the drawback of being usually quite heavily parametrized and that estimation of the crucial parameter a is difficult. In the next section, we present more parsimonious spatial extreme-value models that can also capture both asymptotic dependence regimes.…”
Section: Asymptotic Dependence Classesmentioning
confidence: 99%