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Bayesian inference for clustered extremes

机译:聚类极值的贝叶斯推断

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We consider Bayesian inference for the extremes of dependent stationary series. We discuss the virtues of the Bayesian approach to inference for the extremal index, and for related characteristics of clustering behaviour. We develop an inference procedure based on an automatic declustering scheme, and using simulated data we implement and assess this procedure, making inferences for the extremal index, and for two cluster functionals. We then apply our procedure to a set of real data, specifically a time series of wind-speed measurements, where the clusters correspond to storms. Here the two cluster functionals selected previously correspond to the mean storm length and the mean inter-storm interval. We also consider inference for long-period return levels, advocating the posterior predictive distribution as being most representative of the information required by engineers interested in design level specifications.
机译:对于相关平稳序列的极值,我们考虑贝叶斯推断。我们讨论了贝叶斯方法对极值索引以及聚类行为的相关特征进行推断的优点。我们基于自动分簇方案开发了一个推理程序,并使用模拟数据来实现和评估该程序,从而为极值索引和两个群集功能进行了推理。然后,我们将程序应用于一组实际数据,特别是风速测量的时间序列,其中簇与风暴相对应。在此,先前选择的两个群集功能对应于平均风暴长度和平均风暴间隔。我们还考虑长期回报水平的推论,主张后验预测分布最能代表对设计水平规格感兴趣的工程师所需的信息。

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