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Fascinating Supervisory Signals and Where to Find Them: Deep Anomaly Detection with Scale Learning

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Due to the unsupervised nature of anomaly detection, the key to fueling deep models is finding supervisory signals. Different from current reconstruction-guided generative models and transformation-based contrastive models, we devise novel data-driven supervision for tabular data by introducing a characteristic -- scale -- as data labels. By representing varied sub-vectors of data instances, we define scale as the relationship between the dimensionality of original sub-vectors and that of representations. Scales serve as labels attached to transformed representations, thus offering ample labeled data for neural network training. This paper further proposes a scale learning-based anomaly detection method. Supervised by the learning objective of scale distribution alignment, our approach learns the ranking of representations converted from varied subspaces of each data instance. Through this proxy task, our approach models inherent regularities and patterns within data, which well describes data "normality". Abnormal degrees of testing instances are obtained by measuring whether they fit these learned patterns. Extensive experiments show that our approach leads to significant improvement over state-of-the-art generative/contrastive anomaly detection methods.

Hongzuo Xu, Yijie Wang, Juhui Wei, Songlei Jian, Yizhou Li, Ning Liu• 2023

Related benchmarks

TaskDatasetResultRank
Intrusion DetectionXIIoT, UNSW, CICIDS17, CICIDS18, WUSTL Aggregate (test)
Avg Forward Transfer58.7
12
Intrusion DetectionCICIDS18 (test)
Backward Transfer-0.15
12
Intrusion DetectionUNSW (test)
Backward Transfer-19
12
Intrusion DetectionWUSTL (test)
Backward Transfer-1.22
12
Intrusion DetectionXIIoT (test)
Backward Transfer-1.76
12
Intrusion DetectionCICIDS17 (test)
Backward Transfer-14.82
12
Hyperspectral Anomaly DetectionAlmond
AUPR44.9
8
Hyperspectral Anomaly DetectionGarlicStems
AUPR0.465
8
Hyperspectral Anomaly DetectionPistachio
AUPR44
8
Intrusion DetectionUNSW-NB15, CIC-IDS2017, and X-IIoTID (test)
Inference Time (ms)0.924
7
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