Anomaly detection of multivariate time series is meaningful for system behavior monitoring. This paper proposes an anomaly detection method based on unsupervised Short- and Long-term Mask Representation learning (SLMR). The main idea is to extract short-term local dependency patterns and long-term global trend patterns of the multivariate time series by using multi-scale residual dilated convolution and Gated Recurrent Unit(GRU) respectively. Furthermore, our approach can comprehend temporal contexts and feature correlations by combining spatial-temporal masked self-supervised representation learning and sequence split. It considers the importance of features is different, and we introduce the attention mechanism to adjust the contribution of each feature. Finally, a forecasting-based model and a reconstruction-based model are integrated to focus on single timestamp prediction and latent representation of time series. Experiments show that the performance of our method outperforms other state-of-the-art models on three real-world datasets. Further analysis shows that our method is good at interpretability.
翻译:多变时间序列的异常探测对于系统行为监测是有意义的。本文件提出一种基于不受监督的短期和长期面具代表学习(SLR)的异常探测方法。主要想法是分别使用多尺度剩余变异和Gelated 经常单元(GRU)来提取多变时间序列的短期当地依赖模式和长期全球趋势模式。此外,我们的方法可以通过将空间时装蒙面自我监督的演示学习和顺序分离结合起来来理解时间背景和特征相关关系。它考虑到特征的重要性不同,我们引入关注机制来调整每个特征的贡献。最后,一个基于预测的模型和基于重建的模式被整合到单一的时间序列的预测和潜在代表上。实验表明,我们方法的性能优于三个真实世界数据集上的其他最先进的模型。进一步的分析表明,我们的方法在可解释性方面是好的。