多元时间序列数据无监督异常检测的深度空间约束网络

Yanwen Wu, Di Ge, Y. Cheng
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引用次数: 0

摘要

高维时间序列异常检测一直是系统安全领域的一个重要课题。大多数现有方法都致力于对特征的时间变化进行建模,以捕获异常矩点,然而随着特征的高维化,特征之间的关联呈现出复杂的空间结构。这种空间结构信息将弥补无监督训练条件的约束,引导模型得到更充分的训练。在本研究中,我们提出了一个包含空间监控信号的检测模型。该模型不仅可以同时对时空依赖关系进行建模,还可以通过图结构学习和对比学习模拟现实世界中数据的拓扑结构和物理特征,为异常检测提供指导。我们在两个真实世界的数据集上进行了实验,并证明我们的模型优于基线。最后,我们进行了详细的数据分析,为模型提供可解释性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep spatial-constraints networks for unsupervised anomaly detection in multivariate time series data
High-dimensional time series anomaly detection has always been an important challenge in the field of system security. Most existing methods are dedicated to modelling the temporal variation of features to capture anomalous moment points, however as features become more high-dimensional, the associations between features take on a complex spatial structure. This spatial structure information will compensate for the constraints of unsupervised training conditions, and guide the model to be more fully trained. In this study, we propose a detection model that incorporates spatial supervision signals. The model not only simultaneously models the temporal and spatial dependencies, but also simulates the topological structure and physical characteristics of data in the real world through graph structure learning and contrastive learning, providing guidance for anomaly detection. We conducted experiments on two real-world datasets and demonstrated that our model outperforms the baseline. Finally, we conducted detailed data analysis to provide interpretability for the model.
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