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Anomaly Detection in Extreme Regions via Empirical MV-sets on the Sphere

机译:通过球上的经验MV集在极端区域中进行异常检测

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Extreme regions in the feature space are of particular concern for anomaly detection: anomalies are likely to be located in the tails, whereas data scarcity in such regions makes it difficult to distinguish between large normal instances and anomalies. This paper presents an unsupervised algorithm for anomaly detection in extreme regions. We propose a Minimum Volume set (MV-set) approach relying on multivariate extreme value theory. This framework includes a canonical pre-processing step, which addresses the issue of output sensitivity to standardization choices. The resulting data representation on the sphere highlights the dependence structure of the extremal observations. Anomaly detection is then cast as a MV-set estimation problem on the sphere, where volume is measured by the spherical measure and mass refers to the angular measure. An anomaly then corresponds to an unusual observation given that one of its variables is large. A preliminary rate bound analysis is carried out for the learning method we introduce and its computational advantages are discussed and illustrated by numerical experiments.
机译:特征空间中的极端区域对于异常检测尤为重要:异常可能位于尾部,而此类区域中的数据稀缺使得难以区分大型正常实例和异常。本文提出了一种用于极端区域异常检测的无监督算法。我们提出了一种基于多元极值理论的最小体积集(MV-set)方法。该框架包括规范的预处理步骤,该步骤解决了输出对标准化选择的敏感性问题。球体上的结果数据表示突出了极端观测的依存结构。然后,将异常检测作为MV设置估计问题投放到球体上,其中,球体的测量是通过体积测量的,而质量是指角度的测量。如果异常变量之一很大,则异常对应于异常观察。对我们介绍的学习方法进行了初步的速率边界分析,并通过数值实验讨论和说明了其计算优势。

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