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A New Family of Consistent and Asymptotically-Normal Estimators for the Extremal Index

机译:极值指数的一致和渐近正态估计的新族

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The extremal index (θ) is the key parameter for extending extreme value theory results from i.i.d. to stationary sequences. One important property of this parameter is that its inverse determines the degree of clustering in the extremes. This article introduces a novel interpretation of the extremal index as a limiting probability characterized by two Poisson processes and a simple family of estimators derived from this new characterization. Unlike most estimators for θ in the literature, this estimator is consistent, asymptotically normal and very stable across partitions of the sample. Further, we show in an extensive simulation study that this estimator outperforms in finite samples the logs, blocks and runs estimation methods. Finally, we apply this new estimator to test for clustering of extremes in monthly time series of unemployment growth and inflation rates and conclude that runs of large unemployment rates are more prolonged than periods of high inflation.
机译:极值指数(θ)是扩展i.i.d极值理论结果的关键参数。到固定序列。此参数的一个重要属性是它的反函数确定极端情况下的聚类程度。本文介绍了对极值指数的一种新颖解释,它是由两个泊松过程和从该新特征派生的简单估计量族表征的极限概率。与文献中关于θ的大多数估计器不同,该估计器是一致的,渐近正态的,并且在整个样本分区中都非常稳定。此外,我们在广泛的仿真研究中表明,在有限样本中,此估计器的性能优于对数,块和运行估计方法。最后,我们使用这个新的估算器测试失业率增长和通胀率的每月时间序列中的极端聚类,并得出结论,失业率高的时期要比高通胀时期更长。

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