An Unsupervised Short- and Long-Term Mask Representation for Multivariate Time Series Anomaly Detection

Qiucheng Miao, Chuanfu Xu, Jun Zhan, Dong Zhu, Cheng-Feng Wu
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Abstract

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.
多变量时间序列异常检测的无监督长短期掩码表示
多变量时间序列异常检测对系统行为监测具有重要意义。提出了一种基于无监督长短期掩码表示学习(SLMR)的异常检测方法。主要思想是分别利用多尺度残差扩张卷积和门控循环单元(GRU)提取多元时间序列的短期局部依赖模式和长期全局趋势模式。此外,我们的方法结合了时空掩膜自监督表示学习和序列分割,可以理解时间背景和特征相关性。它考虑到特征的重要性是不同的,并引入注意机制来调整每个特征的贡献。最后,将基于预测的模型和基于重构的模型相结合,重点研究了单时间戳预测和时间序列的潜在表示。实验表明,我们的方法在三个真实数据集上的性能优于其他最先进的模型。进一步分析表明,我们的方法具有较好的可解释性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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