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An Encode-then-Decompose Approach to Unsupervised Time Series Anomaly Detection on Contaminated Training Data--Extended Version

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Time series anomaly detection is important in modern large-scale systems and is applied in a variety of domains to analyze and monitor the operation of diverse systems. Unsupervised approaches have received widespread interest, as they do not require anomaly labels during training, thus avoiding potentially high costs and having wider applications. Among these, autoencoders have received extensive attention. They use reconstruction errors from compressed representations to define anomaly scores. However, representations learned by autoencoders are sensitive to anomalies in training time series, causing reduced accuracy. We propose a novel encode-then-decompose paradigm, where we decompose the encoded representation into stable and auxiliary representations, thereby enhancing the robustness when training with contaminated time series. In addition, we propose a novel mutual information based metric to replace the reconstruction errors for identifying anomalies. Our proposal demonstrates competitive or state-of-the-art performance on eight commonly used multi- and univariate time series benchmarks and exhibits robustness to time series with different contamination ratios.

Buang Zhang, Tung Kieu, Xiangfei Qiu, Chenjuan Guo, Jilin Hu, Aoying Zhou, Christian S. Jensen, Bin Yang• 2025

Related benchmarks

TaskDatasetResultRank
Multivariate Time Series Anomaly DetectionSWaT
F1 Score96.8
43
Multivariate Time Series Anomaly DetectionMSL
Precision93.1
39
Multivariate Time Series Anomaly DetectionSMAP
Precision97
34
Multivariate Time Series Anomaly DetectionPSM
Precision97.8
28
Multivariate Time Series Anomaly DetectionNIPS-TS Swan (test)
AUC-ROC50.1
9
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