Arbeitspapier

TDSRL: Time Series Dual Self-Supervised Representation Learning for Anomaly Detection from Different Perspectives

Time series anomaly detection plays a critical role in various applications, from finance to industrial monitoring. Effective models need to capture both the inherent characteristics of time series data and the unique patterns associated with anomalies. While traditional forecasting-based and reconstruction-based approaches have been successful, they tend to struggle with complex and evolving anomalies. For instance, stock market data exhibits complex and ever-changing fluctuation patterns that defy straightforward modelling. In this paper, we propose a novel approach called TDSRL (Time Series Dual Self-Supervised Representation Learning) for robust anomaly detection. TDSRL leverages synthetic anomaly segments which are artificially generated to simulate real-world anomalies. The key innovation lies in dual self-supervised pretext tasks: one task characterises anomalies in relation to the entire time series, while the other focuses on local anomaly boundaries. Additionally, we introduce a data degradation method that operates in both the time and frequency domains, creating a more natural simulation of real-world anomalies compared to purely synthetic data. Consequently, TDSRL is expected to achieve more accurate predictions of the location and extent of anomalous segments. Our experiments demonstrate that TDSRL outperforms state-of-the-art methods, making it a promising avenue for time series anomaly detection.

Sprache
Englisch

Erschienen in
Series: QBS Research Paper ; No. 2024/03

Klassifikation
Wirtschaft
Thema
Time series anomaly detection
self-supervised representation learning
contrastive learning
synthetic anomaly

Ereignis
Geistige Schöpfung
(wer)
Dai, Yongsheng
Wang, Hui
Rafferty, Karen
Spence, Ivor
Quinn, Barry
Ereignis
Veröffentlichung
(wer)
Queen's University Belfast, Queen's Business School
(wo)
Belfast
(wann)
2024

Letzte Aktualisierung
10.03.2025, 11:42 MEZ

Datenpartner

Dieses Objekt wird bereitgestellt von:
ZBW - Deutsche Zentralbibliothek für Wirtschaftswissenschaften - Leibniz-Informationszentrum Wirtschaft. Bei Fragen zum Objekt wenden Sie sich bitte an den Datenpartner.

Objekttyp

  • Arbeitspapier

Beteiligte

  • Dai, Yongsheng
  • Wang, Hui
  • Rafferty, Karen
  • Spence, Ivor
  • Quinn, Barry
  • Queen's University Belfast, Queen's Business School

Entstanden

  • 2024

Ähnliche Objekte (12)