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Neural Transformation Learning for Deep Anomaly Detection Beyond Images

About

Data transformations (e.g. rotations, reflections, and cropping) play an important role in self-supervised learning. Typically, images are transformed into different views, and neural networks trained on tasks involving these views produce useful feature representations for downstream tasks, including anomaly detection. However, for anomaly detection beyond image data, it is often unclear which transformations to use. Here we present a simple end-to-end procedure for anomaly detection with learnable transformations. The key idea is to embed the transformed data into a semantic space such that the transformed data still resemble their untransformed form, while different transformations are easily distinguishable. Extensive experiments on time series demonstrate that our proposed method outperforms existing approaches in the one-vs.-rest setting and is competitive in the more challenging n-vs.-rest anomaly detection task. On tabular datasets from the medical and cyber-security domains, our method learns domain-specific transformations and detects anomalies more accurately than previous work.

Chen Qiu, Timo Pfrommer, Marius Kloft, Stephan Mandt, Maja Rudolph• 2021

Related benchmarks

TaskDatasetResultRank
Anomaly DetectionSMD
F1 Score81.47
217
Anomaly DetectionSWaT
F1 Score77.43
174
Anomaly DetectionMNIST
AUC97.37
87
Anomaly DetectionWBC
ROCAUC0.9568
87
Tabular Anomaly Detectionpima
AUC ROC0.617
53
Tabular Anomaly Detectionionosphere
AUC-ROC94.53
50
Tabular Anomaly DetectionBreastW
AUC-ROC0.9458
50
Anomaly DetectionMammography
AUC-ROC0.7663
47
Anomaly DetectionSatimage 2
AUC99.79
41
Anomaly Detectionsatellite
AUC80.8
41
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