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Automated Model Selection for Time-Series Anomaly Detection

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arxiv 2009.04395 v1 pith:TFHDDZNH submitted 2020-08-25 cs.LG eess.SP

Automated Model Selection for Time-Series Anomaly Detection

classification cs.LG eess.SP
keywords modeldetectionselectiontime-seriesanomalyautomatedbecauselabels
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Time-series anomaly detection is a popular topic in both academia and industrial fields. Many companies need to monitor thousands of temporal signals for their applications and services and require instant feedback and alerts for potential incidents in time. The task is challenging because of the complex characteristics of time-series, which are messy, stochastic, and often without proper labels. This prohibits training supervised models because of lack of labels and a single model hardly fits different time series. In this paper, we propose a solution to address these issues. We present an automated model selection framework to automatically find the most suitable detection model with proper parameters for the incoming data. The model selection layer is extensible as it can be updated without too much effort when a new detector is available to the service. Finally, we incorporate a customized tuning algorithm to flexibly filter anomalies to meet customers' criteria. Experiments on real-world datasets show the effectiveness of our solution.

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