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ESAD: End-to-end Deep Semi-supervised Anomaly Detection

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This paper explores semi-supervised anomaly detection, a more practical setting for anomaly detection where a small additional set of labeled samples are provided. We propose a new KL-divergence based objective function for semi-supervised anomaly detection, and show that two factors: the mutual information between the data and latent representations, and the entropy of latent representations, constitute an integral objective function for anomaly detection. To resolve the contradiction in simultaneously optimizing the two factors, we propose a novel encoder-decoder-encoder structure, with the first encoder focusing on optimizing the mutual information and the second encoder focusing on optimizing the entropy. The two encoders are enforced to share similar encoding with a consistent constraint on their latent representations. Extensive experiments have revealed that the proposed method significantly outperforms several state-of-the-arts on multiple benchmark datasets, including medical diagnosis and several classic anomaly detection benchmarks.

Chaoqin Huang, Fei Ye, Peisen Zhao, Ya Zhang, Yan-Feng Wang, Qi Tian• 2020

Related benchmarks

TaskDatasetResultRank
Anomaly DetectionCIFAR-10--
120
Anomaly DetectionMNIST (test)
AUC99.6
65
Anomaly DetectionMNIST one-class classification--
47
Anomaly Detectionsatellite
AUC92.5
41
Anomaly DetectionSatimage 2
AUC99.9
41
Anomaly DetectionFashion MNIST--
40
Anomaly DetectionShuttle
AUC0.991
39
Anomaly DetectionFashionMNIST (test)
ROCAUC0.959
35
Anomaly Detectioncardio
AUC0.988
30
Anomaly DetectionArrhythmia
AUC0.852
16
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