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When Model Meets New Normals: Test-time Adaptation for Unsupervised Time-series Anomaly Detection

About

Time-series anomaly detection deals with the problem of detecting anomalous timesteps by learning normality from the sequence of observations. However, the concept of normality evolves over time, leading to a "new normal problem", where the distribution of normality can be changed due to the distribution shifts between training and test data. This paper highlights the prevalence of the new normal problem in unsupervised time-series anomaly detection studies. To tackle this issue, we propose a simple yet effective test-time adaptation strategy based on trend estimation and a self-supervised approach to learning new normalities during inference. Extensive experiments on real-world benchmarks demonstrate that incorporating the proposed strategy into the anomaly detector consistently improves the model's performance compared to the baselines, leading to robustness to the distribution shifts.

Dongmin Kim, Sunghyun Park, Jaegul Choo• 2023

Related benchmarks

TaskDatasetResultRank
Anomaly DetectionSMD
F1 Score72.3
359
Multivariate Time Series Anomaly DetectionSWaT
F1 Score71.1
43
Time Series Anomaly DetectionWater
CCE0.65
20
Time Series Anomaly DetectionSWaT
CCE0.01
20
Time Series Anomaly DetectionPSM
CCE-0.07
20
Time Series Anomaly DetectionSWAN
CCE0.42
20
Time Series Anomaly DetectionWADI
CCE1.69
20
Time Series Anomaly DetectionYahoo
Precision0.23
12
Time Series Anomaly DetectionTODS
Precision35.4
12
Time Series Anomaly DetectionIOPS
Precision43.5
12
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