TY - GEN
T1 - Unsupervised Time Series Anomaly Prediction with Importance-based Generative Contrastive Learning
AU - Zhao, Kai
AU - Zhuang, Zhihao
AU - Guo, Chenjuan
AU - Miao, Hao
AU - Jensen, Christian S.
AU - Cheng, Yunyao
AU - Yang, Bin
N1 - Publisher Copyright:
© 2025 Copyright held by the owner/author(s).
PY - 2025/8/3
Y1 - 2025/8/3
N2 - We study the problem of time series anomaly prediction, which is relevant to a range of real-world applications. Existing anomaly prediction methods rely on labeled training data for achieving acceptable accuracy. However, such data may be difficult to obtain; and in real-time deployments, anomalies can occur that were not seen in labeled data, thus making them difficult to predict. We provide a theoretical analysis and propose an Importance-based Generative Contrastive Learning method (IGCL) for unsupervised anomaly prediction. IGCL employs a controlled diffusion module to produce anomaly precursor patterns. Next, ICGL learns contextual representations to extract temporal dependencies from pairs of normal time series and anomaly precursors. IGCL is then able to predict anomalies by identifying anomaly precursors that will evolve into future anomalies. To address challenges caused by potentially complex precursor combinations involving multiple variables, we propose a memory bank with importance scores that stores representative samples adaptively and generates more complex anomaly precursors. Extensive experiments on nine benchmark datasets offer evidence that the proposed method is able to outperform state-of-the-art baselines.
AB - We study the problem of time series anomaly prediction, which is relevant to a range of real-world applications. Existing anomaly prediction methods rely on labeled training data for achieving acceptable accuracy. However, such data may be difficult to obtain; and in real-time deployments, anomalies can occur that were not seen in labeled data, thus making them difficult to predict. We provide a theoretical analysis and propose an Importance-based Generative Contrastive Learning method (IGCL) for unsupervised anomaly prediction. IGCL employs a controlled diffusion module to produce anomaly precursor patterns. Next, ICGL learns contextual representations to extract temporal dependencies from pairs of normal time series and anomaly precursors. IGCL is then able to predict anomalies by identifying anomaly precursors that will evolve into future anomalies. To address challenges caused by potentially complex precursor combinations involving multiple variables, we propose a memory bank with importance scores that stores representative samples adaptively and generates more complex anomaly precursors. Extensive experiments on nine benchmark datasets offer evidence that the proposed method is able to outperform state-of-the-art baselines.
KW - anomaly prediction
KW - generative contrastive learning
KW - time series
UR - https://www.scopus.com/pages/publications/105014313432
U2 - 10.1145/3711896.3737174
DO - 10.1145/3711896.3737174
M3 - 会议稿件
AN - SCOPUS:105014313432
T3 - Proceedings of the ACM SIGKDD International Conference on Knowledge Discovery and Data Mining
SP - 3945
EP - 3956
BT - KDD 2025 - Proceedings of the 31st ACM SIGKDD Conference on Knowledge Discovery and Data Mining
PB - Association for Computing Machinery
T2 - 31st ACM SIGKDD Conference on Knowledge Discovery and Data Mining, KDD 2025
Y2 - 3 August 2025 through 7 August 2025
ER -