2023
DOI: 10.14778/3583140.3583155
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OneShotSTL: One-Shot Seasonal-Trend Decomposition For Online Time Series Anomaly Detection And Forecasting

Abstract: Seasonal-trend decomposition is one of the most fundamental concepts in time series analysis that supports various downstream tasks, including time series anomaly detection and forecasting. However, existing decomposition methods rely on batch processing with a time complexity of O ( W ), where W is the number of data points within a time window. Therefore, they cannot always efficiently support real-time analysis that demands low processi… Show more

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Cited by 6 publications
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References 32 publications
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