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Bayesian inference for nonstationary marginal extremes

机译:非平稳边际极值的贝叶斯推断

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We propose a simple piecewise model for a sample of peaks-over-threshold, nonstationary with respect to multidimensional covariates, and estimate it using a carefully designed and computationally efficient Bayesian inference. Model parameters are themselves parameterized as functions of covariates using penalized B-spline representations. This allows detailed characterization of non-stationarity extreme environments. The approach gives similar inferences to a comparable frequentist penalized maximum likelihood method, but is computationally considerably more efficient and allows a more complete characterization of uncertainty in a single modelling step. We use the model to quantify the joint directional and seasonal variation of storm peak significant wave height at a northern North Sea location and estimate predictive directional–seasonal return value distributions necessary for the design and reliability assessment of marine and coastal structures.
机译:对于多维协变量的非平稳阈值峰值的样本,我们提出了一个简单的分段模型,并使用经过精心设计且计算效率高的贝叶斯推断对其进行了估算。模型参数本身使用罚B样条表示法作为协变量的函数进行参数化。这样可以对非平稳性极端环境进行详细描述。该方法与类似的频频惩罚最大似然法给出了类似的推论,但计算效率更高,并且可以在单个建模步骤中更完全地表征不确定性。我们使用该模型来量化北海北部位置的风暴峰值显着波高的联合方向和季节变化,并估算海洋和沿海结构的设计和可靠性评估所必需的预测性方向-季节返回值分布。

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