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A Probabilistic Approach to Aggregating Anomalies for Unsupervised Anomaly Detection with Industrial Applications

机译:用工业应用聚集无监督异常检测异常的概率方法

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This paper presents a novel, unsupervised approach to detecting anomalies at the collective level. The method probabilistically aggregates the contribution of the individual anomalies in order to detect significantly anomalous groups of cases. The approach is unsupervised in that as only input, it uses a list of cases ranked according to its individual anomaly score. Thus, any anomaly detection algorithm can be used for scoring individual anomalies, both supervised and unsupervised approaches. The applicability of the proposed approach is shown by applying it to an artificial data set and to two industrial data sets – detecting anomalously moving cranes (model-based detection) and anomalous fuel consumption (neighbour-based detection).
机译:本文提出了一种新颖,无监督的方法来检测集体层面的异常。该方法概率地聚集了个体异常的贡献,以便检测到显着异常的病例组。该方法是无人监督的,因为只有输入,它使用根据其单独的异常分数排名的案例列表。因此,任何异常检测算法都可以用于评分单个异常,包括监督和无监督的方法。通过将其应用于人工数据集和两个工业数据集 - 检测异常移动起重机(基于模型的检测)和异常燃料消耗(基于邻基的检测)来示出所提出的方法的适用性。

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