An Unsupervised Learning-Based Multivariate Anomaly Detection Method for Dynamic Attention Graphs


연구 분야: Artificial Intelligence



학회: ICCCV '24: Proceedings of the 2024 6th International Conference on Control and Computer Vision


초록

The widespread adoption of information technology has led to the proliferation of data applications, underscoring the importance of identifying potential anomalies within datasets. However, developing anomaly detection models for intricate data presents a formidable challenge. Issues such as the scarcity and inferior quality of anomaly data hinder the effectiveness of supervised models, necessitating the exploration of unsupervised detection methods. This manuscript proposes an unsupervised learning-based multivariate anomaly detection method for dynamic attention graphs (ADDAG), which combines the characteristics of graph convolutional neural networks that fuse the relationships between data while updating their own nodes to reconstruct the data and extract the anomalous data. Compared with the traditional static attention graph, the use of dynamic attention graph enhances the ability to express the features of complex associated time-series variables. In the experimental part, the performance of the proposed method in this paper outperforms conventional anomaly detection algorithms when tested on multiple datasets.


Author Profile
Dun Huang Shi

School of Mechatronic Engineering Xi'an Technological University China

China
Author Profile
Tao Zhang

School of Mechatronic Engineering Xi'an Technological University China

China
Author Profile
Lei Sun

Aerospace Zhirong Information Technology (Zhuhai) Co. Ltd. China

China

📄 논문 정보

발행 연도 2024년
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출판 국가 China
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