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首页> 外文期刊>Stochastic environmental research and risk assessment >Functional outlier detection by a local depth with application to NO (x) levels
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Functional outlier detection by a local depth with application to NO (x) levels

机译:通过局部深度检测功能异常值,并适用于NO(x)级别

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This paper proposes methods to detect outliers in functional data sets and the task of identifying atypical curves is carried out using the recently proposed kernelized functional spatial depth (KFSD). KFSD is a local depth that can be used to order the curves of a sample from the most to the least central, and since outliers are usually among the least central curves, we present a probabilistic result which allows to select a threshold value for KFSD such that curves with depth values lower than the threshold are detected as outliers. Based on this result, we propose three new outlier detection procedures. The results of a simulation study show that our proposals generally outperform a battery of competitors. We apply our procedures to a real data set consisting in daily curves of emission levels of nitrogen oxides (NO) since it is of interest to identify abnormal NO levels to take necessary environmental political actions.
机译:本文提出了检测功能数据集中异常值的方法,并使用最近提出的核化功能空间深度(KFSD)来执行非典型曲线的识别任务。 KFSD是一个局部深度,可用于对样本的曲线从最中心到最不中心的顺序进行排序,并且由于离群值通常位于最不中心的曲线之中,因此我们提供了概率结果,该结果可为KFSD选择阈值,例如将深度值低于阈值的曲线检测为离群值。基于此结果,我们提出了三种新的离群值检测程序。仿真研究的结果表明,我们的建议通常要比其他竞争对手好。我们将程序应用于真实数据集,该数据集包含氮氧化物(NO)排放水平的日曲线,因为识别异常NO水平以采取必要的环境政治行动很有意义。

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