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Anomaly detection with inexact labels

机译:异常检测与不精确标签

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摘要

We propose a supervised anomaly detection method for data with inexact anomaly labels, where each label, which is assigned to a set of instances, indicates that at least one instance in the set is anomalous. Although many anomaly detection methods have been proposed, they cannot handle inexact anomaly labels. To measure the performance with inexact anomaly labels, we define the inexact AUC, which is our extension of the area under the ROC curve (AUC) for inexact labels. The proposed method trains an anomaly score function so that the smooth approximation of the inexact AUC increases while anomaly scores for non-anomalous instances become low. We model the anomaly score function by a neural network-based unsupervised anomaly detection method, e.g., autoencoders. The proposed method performs well even when only a small number of inexact labels are available by incorporating an unsupervised anomaly detection mechanism with inexact AUC maximization. Using various datasets, we experimentally demonstrate that our proposed method improves the anomaly detection performance with inexact anomaly labels, and outperforms existing unsupervised and supervised anomaly detection and multiple instance learning methods.
机译:我们提出了一种监督的异常检测方法,用于具有不精确的异常标签的数据,其中每个标签分配给一组实例,指示集合中的至少一个实例是异常的。虽然已经提出了许多异常的检测方法,但它们不能处理不精确的异常标签。为了测量不精确的异常标签的性能,我们定义了不精确的AUC,这是我们在ROC曲线(AUC)下的区域的扩展,用于不准确标签。该方法列举了异常的得分函数,使得不精确的AUC的平滑近似,而非异常情况下的异常分数变低。我们通过基于神经网络的无调节异常检测方法模拟异常得分功能,例如,自动化器。即使仅通过具有不适的AUC最大化的无监督异常检测机制,可以仅获得少量不精确的标记,所提出的方法也表现良好。使用各种数据集,我们通过实验证明我们的提出方法通过不精确的异常标签提高了异常检测性能,并且优于现有无监督和监督异常检测和多实例学习方法。

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