计算机科学
异常检测
水准点(测量)
代表(政治)
系列(地层学)
人工智能
对偶(语法数字)
特征学习
异常(物理)
模式识别(心理学)
机器学习
时间序列
艺术
地理
古生物学
物理
文学类
大地测量学
凝聚态物理
政治
政治学
法学
生物
作者
Yiyuan Yang,Chaoli Zhang,Tian Zhou,Qingsong Wen,Liang Sun
标识
DOI:10.1145/3580305.3599295
摘要
Time series anomaly detection is critical for a wide range of applications. It aims to identify deviant samples from the normal sample distribution in time series. The most fundamental challenge for this task is to learn a representation map that enables effective discrimination of anomalies. Reconstruction-based methods still dominate, but the representation learning with anomalies might hurt the performance with its large abnormal loss. On the other hand, contrastive learning aims to find a representation that can clearly distinguish any instance from the others, which can bring a more natural and promising representation for time series anomaly detection. In this paper, we propose DCdetector, a multi-scale dual attention contrastive representation learning model. DCdetector utilizes a novel dual attention asymmetric design to create the permutated environment and pure contrastive loss to guide the learning process, thus learning a permutation invariant representation with superior discrimination abilities. Extensive experiments show that DCdetector achieves state-of-the-art results on multiple time series anomaly detection benchmark datasets. Code is publicly available at https://github.com/DAMO-DI-ML/KDD2023-DCdetector.
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