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Autoencoding Binary Classifiers for Supervised Anomaly Detection

机译:用于监督异常检测的自动编码二进制分类器

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We propose the Autoencoding Binary Classifiers (ABC), a novel supervised anomaly detector based on the Autoencoder (AE). There are two main approaches in anomaly detection: supervised and unsupervised. The supervised approach accurately detects the known anomalies included in training data, but it cannot detect the unknown anomalies. Meanwhile, the unsupervised approach can detect both known and unknown anomalies that are located away from normal data points. However, it does not detect known anomalies as accurately as the supervised approach. Furthermore, even if we have labeled normal data points and anomalies, the unsupervised approach cannot utilize these labels. The ABC is a probabilistic binary classifier that effectively exploits the label information, where normal data points are modeled using the AE as a component. By maximizing the likelihood, the AE in the proposed ABC is trained to minimize the reconstruction error for normal data points, and to maximize it for known anomalies. Since our approach becomes able to reconstruct the normal data points accurately and fails to reconstruct the known and unknown anomalies, it can accurately discriminate both known and unknown anomalies from normal data points. Experimental results show that the ABC achieves higher detection performance than existing supervised and unsupervised methods.
机译:我们提出了自动编码二进制分类器(ABC),这是一种基于自动编码器(AE)的新型监督异常检测器。异常检测有两种主要方法:有监督的和无监督的。有监督的方法可以准确地检测出训练数据中包含的已知异常,但无法检测出未知异常。同时,无监督方法可以检测到远离正常数据点的已知和未知异常。但是,它不能像监督方法那样准确地检测到已知异常。此外,即使我们已经标记了正常的数据点和异常,这种无监督的方法也无法利用这些标记。 ABC是一种概率二进制分类器,可有效利用标签信息,其中使用AE作为组件对正常数据点进行建模。通过最大化可能性,训练了拟议ABC中的AE以最小化正常数据点的重构误差,并最大程度地消除已知异常的重构误差。由于我们的方法变得能够准确地重建正常数据点,并且无法重建已知和未知异常,因此它可以从正常数据点准确地区分已知和未知异常。实验结果表明,与现有的有监督和无监督方法相比,ABC具有更高的检测性能。

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