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Compatible Unsupervised Anomaly Detection with Multi-Perspective Spatio-Temporal Learning

  • Tingyang Chen
  • , Bolong Zheng*
  • , Shuncheng Liu
  • , Zhujiong Fan
  • , Zhi Xu
  • , Lingsen Yan
  • , Kai Zeng
  • , Tao Ye
  • , Xiaofang Zhou
  • *Corresponding author for this work

Research output: Chapter in Book/Conference Proceeding/ReportConference Paper published in a bookpeer-review

Abstract

Anomaly detection is one of the most significant tasks in industrial automatic maintenance, such as in distributed cloud systems. However, the implementation of existing anomaly detection methods is still challenging in (i) capturing the complex spatial and temporal correlations of multivariate time series, (ii) effectively adapting to the unsupervised condition, and (iii) generalizing across nodes in distributed systems. To address these challenges, we design a multi-perspective spatio-temporal attention model, called STAMP, which consists of a prediction module ST-ATTN, a reconstruction module AutoEncoder, and an adversarial optimizing module. Specifically, ST-ATTN leverages multiple attention mechanisms to perform spatio-temporal learning from both local and global perspectives, AutoEncoder is utilized to fit implicit representations, and the adversarial optimization module employs a min-max training strategy to enhance the learning capability. By introducing pre-training strategies, STAMP can be effectively adapted to distributed systems with a strong generalization ability. Furthermore, to cope with the practical unlabeled data conditions, we propose an unsupervised framework compatible with not only STAMP but also other advanced detection models. In this framework, a screening process is first conducted by traditional methods to generate a training set of pseudo-normal samples. Second, the models are trained and then used for detection. The framework can be further optimized by performing feature selection based on model-derived information for a better detectability. Extensive experiments in real-world datasets demonstrate that the proposed model and framework achieve superior performance when compared with baselines under both semi-supervised and unsupervised conditions. In particular, the detection framework has already been applied in Huawei's GaussDB (DWS) system.

Original languageEnglish
Title of host publicationProceedings - 2025 IEEE 41st International Conference on Data Engineering, ICDE 2025
PublisherIEEE Computer Society
Pages4066-4078
Number of pages13
ISBN (Electronic)9798331536039
DOIs
Publication statusPublished - 2025
Event41st IEEE International Conference on Data Engineering, ICDE 2025 - Hong Kong, China
Duration: 19 May 202523 May 2025

Publication series

NameProceedings - International Conference on Data Engineering
ISSN (Print)1084-4627
ISSN (Electronic)2375-0286

Conference

Conference41st IEEE International Conference on Data Engineering, ICDE 2025
Country/TerritoryChina
CityHong Kong
Period19/05/2523/05/25

Bibliographical note

Publisher Copyright:
© 2025 IEEE.

Keywords

  • anomaly detection
  • multivariate time series
  • spatio-temporal correlation
  • unsupervised learning

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