Classical models for multivariate or spatial extremes are mainly based upon the asymptotically justified max-stable or generalized Pareto processes. These models are suitable when asymptotic dependence is present, i.e., the joint tail decays at the same rate as the marginal tail. However, recent environmental data applications suggest that asymptotic independence is equally important and, unfortunately, existing spatial models in this setting that are both flexible and can be fitted efficiently are scarce. Here, we propose a new spatial copula model based on the generalized hyperbolic distribution, which is a specific normal mean-variance mixture and is very popular in financial modeling. The tail properties of this distribution have been studied in the literature, but with contradictory results. It turns out that the proofs from the literature contain mistakes. We here give a corrected theoretical description of its tail dependence structure and then exploit the model to analyze a simulated dataset from the inverted Brown-Resnick process, hindcast significant wave height data in the North Sea, and wind gust data in the state of Oklahoma, USA. We demonstrate that our proposed model is flexible enough to capture the dependence structure not only in the tail but also in the bulk.
翻译:多变或空间极端的经典模型主要基于无症状、有正当理由的最高偏差或普遍Pareto进程。这些模型在无症状依赖性存在时是合适的,即联合尾巴与边缘尾巴的衰减速度相同。然而,最近的环境数据应用表明,无症状独立性同样重要,不幸的是,这一环境中现有的既灵活又可有效适应的空间模型很少。在这里,我们提议了一个新的空间相交模型,以普遍超偏差分布为基础,这是一种特殊的正常平均偏差混合物,在金融模型中非常流行。文献中研究了这种分布的尾部特性,但结果相互矛盾。结果相反,文献中的证据含有错误。我们在这里对其尾依赖结构进行校正的理论描述,然后利用模型分析从倒转的布朗-Resnick进程中产生的模拟数据集,对北海的重要波高数据进行修正,以及美国俄克拉荷马州风高数据。我们证明,我们提议的模型有足够的灵活性,不仅能捕捉到尾部结构,而且不能捕捉尾部。