Causanom: Anomaly Detection With Flexible Causal Graphs

Sasha Strelnikoff, Aruna Jammalamadaka, Tsai-Ching Lu
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Abstract

Causality-based anomaly detection methods provide at least two significant theoretical benefits over purely statistical methods: 1. Improved robustness to non-anomalous out-of-distribution data, which implies a reduction in false-alarms; 2. A potential for failure localization due to the topological ordering of the causal graph. Recent studies have considered the utilization of causality-based methods for time series anomaly detection, however, these methods require the causal graph to be fixed; resultingly, such methods are not robust to incorrectly estimated causal graphs and are not able to natively model counterfactual scenarios. To address these limitations, we introduce Causanom: a graph-based encoder-decoder neural network for time series anomaly detection. Causanom utilizes a node conditional data-stream representation in conjunction with a weighted graph aggregation function in order to efficiently capture heterogeneous node dynamics whilst allowing for a flexible graphical structure. We show that Causanom can be trained along with auxiliary constraints in order to tune the causal graph and improve performance. Additionally, we show that Causanom can be used to produce counterfactual data, which we leverage to identify violated causal relationships. Using real and synthetic time series data respectively, we show that Causanom performs at least as well as state-of-the-art baselines in the anomaly detection task and outperforms existing methods in a causal attribution task.
因果关系:灵活因果图的异常检测
与纯统计方法相比,基于因果关系的异常检测方法至少提供了两个显著的理论优势:提高了对非异常分布外数据的鲁棒性,这意味着减少了假警报;2. 由于因果图的拓扑顺序,有可能出现故障定位。最近的研究考虑利用基于因果关系的方法进行时间序列异常检测,然而,这些方法要求因果图是固定的;因此,这种方法对错误估计的因果图不具有鲁棒性,并且不能对反事实情景进行本地建模。为了解决这些限制,我们引入了Causanom:一个基于图的编码器-解码器神经网络,用于时间序列异常检测。Causanom利用节点条件数据流表示与加权图聚合功能相结合,以便有效地捕获异构节点动态,同时允许灵活的图形结构。我们证明了Causanom可以与辅助约束一起训练,以调整因果图并提高性能。此外,我们表明Causanom可以用来产生反事实数据,我们利用这些数据来识别违反的因果关系。分别使用真实和合成时间序列数据,我们表明Causanom在异常检测任务中的表现至少与最先进的基线一样好,并且在因果归因任务中优于现有方法。
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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