通过消失相关性的时间和动态分析对因果异常进行排序。

Wei Cheng, Kai Zhang, Haifeng Chen, Guofei Jiang, Zhengzhang Chen, Wei Wang
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引用次数: 53

摘要

现代世界见证了我们从大型信息系统和网络物理系统中收集、传输和分发实时监控和监视数据的能力的急剧提高。因此,检测系统异常在安全、故障管理和工业优化等许多领域引起了人们的极大兴趣。近年来,不变网络已被证明是表征复杂系统行为的一种有效方法。在不变网络中,节点代表一个系统组件,而边缘表示两个组件之间稳定、重要的交互作用。不变性网络的结构和进化,特别是消失的相关性,可以为定位因果异常和执行诊断提供重要的启示。然而,现有的用不变网络检测因果异常的方法通常使用消失相关性的百分比来对可能的偶然成分进行排序,这种方法有几个局限性:1)忽略了网络中的故障传播;2)根偶然异常可能并不总是相关性消失百分比高的节点;3)相关性消失的时间模式没有被用于鲁棒检测。为了解决这些限制,在本文中,我们提出了一个基于网络扩散的框架来识别重要的因果异常并对它们进行排序。该方法可以有效地模拟故障在整个不变网络上的传播,并可以对结构模式和时间演化的不变性模式进行联合推理。因此,它可以定位真正导致相关性消失的高置信度异常,并可以补偿系统中的非结构化测量噪声。在合成数据集、银行信息系统数据集和燃煤电厂网络物理系统数据集上进行的大量实验证明了我们方法的有效性。
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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Ranking Causal Anomalies via Temporal and Dynamical Analysis on Vanishing Correlations.

Modern world has witnessed a dramatic increase in our ability to collect, transmit and distribute real-time monitoring and surveillance data from large-scale information systems and cyber-physical systems. Detecting system anomalies thus attracts significant amount of interest in many fields such as security, fault management, and industrial optimization. Recently, invariant network has shown to be a powerful way in characterizing complex system behaviours. In the invariant network, a node represents a system component and an edge indicates a stable, significant interaction between two components. Structures and evolutions of the invariance network, in particular the vanishing correlations, can shed important light on locating causal anomalies and performing diagnosis. However, existing approaches to detect causal anomalies with the invariant network often use the percentage of vanishing correlations to rank possible casual components, which have several limitations: 1) fault propagation in the network is ignored; 2) the root casual anomalies may not always be the nodes with a high-percentage of vanishing correlations; 3) temporal patterns of vanishing correlations are not exploited for robust detection. To address these limitations, in this paper we propose a network diffusion based framework to identify significant causal anomalies and rank them. Our approach can effectively model fault propagation over the entire invariant network, and can perform joint inference on both the structural, and the time-evolving broken invariance patterns. As a result, it can locate high-confidence anomalies that are truly responsible for the vanishing correlations, and can compensate for unstructured measurement noise in the system. Extensive experiments on synthetic datasets, bank information system datasets, and coal plant cyber-physical system datasets demonstrate the effectiveness of our approach.

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