StackVAE-G:一种高效且可解释的时间序列异常检测模型

Wenkai Li , Wenbo Hu , Ting Chen , Ning Chen , Cheng Feng
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引用次数: 3

摘要

最近的研究表明,基于自动编码器的模型能够以无监督的方式拟合复杂数据,因此在异常检测任务中可以获得优异的性能。在这项工作中,我们提出了一种新的基于自动编码器的模型,称为StackVAE-G,它可以显著提高多变量时间序列异常检测的效率和可解释性。具体而言,我们通过使用权重共享方案的逐块堆叠重建来利用时间序列通道之间的相似性,以减小学习模型的大小,并消除对训练数据中未知噪声的过拟合。我们还利用图学习模块来学习稀疏邻接矩阵,以明确地捕捉多个时间序列通道之间的稳定相互关系结构,用于相互关系通道的可解释模式重建。结合这两个模块,我们介绍了用于多变量时间序列异常检测的堆叠块VAE(变分自动编码器)和GNN(图神经网络)模型。我们在三个常用的公共数据集上进行了广泛的实验,表明我们的模型实现了与最先进的模型相当(甚至更好)的性能,同时需要更少的计算和内存成本。此外,我们证明了我们的模型学习的邻接矩阵准确地捕捉了多个通道之间的相互关系,可以为故障诊断应用提供有价值的信息。
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StackVAE-G: An efficient and interpretable model for time series anomaly detection

Recent studies have shown that autoencoder-based models can achieve superior performance on anomaly detection tasks due to their excellent ability to fit complex data in an unsupervised manner. In this work, we propose a novel autoencoder-based model, named StackVAE-G that can significantly bring the efficiency and interpretability to multivariate time series anomaly detection. Specifically, we utilize the similarities across the time series channels by the stacking block-wise reconstruction with a weight-sharing scheme to reduce the size of learned models and also relieve the overfitting to unknown noises in the training data. We also leverage a graph learning module to learn a sparse adjacency matrix to explicitly capture the stable interrelation structure among multiple time series channels for the interpretable pattern reconstruction of interrelated channels. Combining these two modules, we introduce the stacking block-wise VAE (variational autoencoder) with GNN (graph neural network) model for multivariate time series anomaly detection. We conduct extensive experiments on three commonly used public datasets, showing that our model achieves comparable (even better) performance with the state-of-the-art models and meanwhile requires much less computation and memory cost. Furthermore, we demonstrate that the adjacency matrix learned by our model accurately captures the interrelation among multiple channels, and can provide valuable information for failure diagnosis applications.

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