超过高阈值的超标模型

A. Davison, Richard L. Smith
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引用次数: 1583

摘要

我们通过模拟超过高阈值的异常的大小和发生情况来讨论对数据极值的分析。描述了这种超越的自然分布,即广义帕累托分布,并阐明了它的性质。开发了单变量和回归数据的估计和模型检查程序,并研究了样本中最极端观测值的影响和包含的信息。描述了超标点过程的季节性和序列依赖性模型。讨论了河流流量和波浪高的数据集,并描述了在核设施选址中的应用
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Models for exceedances over high thresholds
We discuss the analysis of the extremes of data by modelling the sizes and occurrence of exceedances over high thresholds. The natural distribution for such exceedances, the generalized Pareto distribution, is described and its properties elucidated. Estimation and model-checking procedures for univariate and regression data are developed, and the influence of and information contained in the most extreme observations in a sample are studied. Models for seasonality and serial dependence in the point process of exceedances are described. Sets of data on river flows and wave heights are discussed, and an application to the siting of nuclear installations is described
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