Estimating extreme value index by subsampling for massive datasets with heavy-tailed distributions

Pub Date : 2024-07-19 DOI:10.4310/22-sii749
Yongxin Li, Liujun Chen, Deyuan Li, Hansheng Wang
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Abstract

Modern statistical analyses often encounter datasets with massive sizes and heavy-tailed distributions. For datasets with massive sizes, traditional estimation methods can hardly be used to estimate the extreme value index directly. To address the issue, we propose here a subsampling-based method. Specifically, multiple subsamples are drawn from the whole dataset by using the technique of simple random subsampling with replacement. Based on each subsample, an approximate maximum likelihood estimator can be computed. The resulting estimators are then averaged to form a more accurate one. Under appropriate regularity conditions, we show theoretically that the proposed estimator is consistent and asymptotically normal. With the help of the estimated extreme value index, we can estimate high-level quantiles and tail probabilities of a heavy-tailed random variable consistently. Extensive simulation experiments are provided to demonstrate the promising performance of our method. A real data analysis is also presented for illustration purpose.
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通过子采样估计重尾分布海量数据集的极值指数
现代统计分析经常会遇到大规模和重尾分布的数据集。对于规模庞大的数据集,传统的估计方法很难直接用来估计极值指数。为了解决这个问题,我们在此提出一种基于子抽样的方法。具体来说,我们使用简单随机子抽样技术,从整个数据集中抽取多个子样本进行替换。根据每个子样本,可以计算出近似最大似然估计值。然后对得到的估计值取平均值,形成一个更精确的估计值。在适当的正则条件下,我们从理论上证明了所提出的估计值是一致的,而且渐近正态。在估计极值指数的帮助下,我们可以一致地估计重尾随机变量的高阶量值和尾概率。大量的模拟实验证明了我们的方法具有良好的性能。此外,我们还提供了一个真实数据分析,以作说明。
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