MSAD: A Deep Dive into Model Selection for Time series Anomaly Detection
Emmanouil Sylligardos, John Paparrizos, Themis Palpanas, Pierre Senellart, Paul Boniol

TL;DR
This paper evaluates the use of time series classification methods for model selection in anomaly detection, demonstrating their effectiveness over individual methods across diverse datasets.
Contribution
It provides the first extensive experimental evaluation of time series classification for model selection in anomaly detection, establishing a new baseline.
Findings
Model selection methods outperform individual anomaly detection algorithms.
Time series classification for model selection is efficient and accurate.
The approach is scalable across diverse datasets.
Abstract
Anomaly detection is a fundamental task for time series analytics with important implications for the downstream performance of many applications. Despite increasing academic interest and the large number of methods proposed in the literature, recent benchmarks and evaluation studies demonstrated that no overall best anomaly detection methods exist when applied to very heterogeneous time series datasets. Therefore, the only scalable and viable solution to solve anomaly detection over very different time series collected from diverse domains is to propose a model selection method that will select, based on time series characteristics, the best anomaly detection methods to run. Existing AutoML solutions are, unfortunately, not directly applicable to time series anomaly detection, and no evaluation of time series-based approaches for model selection exists. Towards that direction, this…
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