利用功能连接推理的先验知识加速基于因果推理的RCA

Giles Winchester, G. Parisis, Robert Harper, L. Berthouze
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引用次数: 1

摘要

修复网络基础设施中的故障的关键步骤是确定其根本原因。然而,现代网络的大规模、复杂和动态性使得基于因果推理的根本原因分析(RCA)在可扩展性和知识随时间漂移方面具有挑战性。在本文中,我们提出了一个框架,该框架利用功能连接的神经科学概念-事件之间统计依赖关系的图表示-作为一种可扩展的方法来获取和维护动态网络中基于因果推理的RCA方法的先验知识。我们在合成和真实世界的数据上证明,我们提出的方法可以在不显着损失准确性的情况下为现有的因果推理方法提供显着的加速。最后,我们讨论了用户定义参数的选择对因果推理精度的影响,并得出结论,该框架可以安全地部署在现实世界中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accelerating Causal Inference Based RCA Using Prior Knowledge From Functional Connectivity Inference
A crucial step in remedying faults within network infrastructures is to determine their root cause. However, the large-scale, complex and dynamic nature of modern networks makes causal inference-based root cause analysis (RCA) challenging in terms of scalability and knowledge drift over time. In this paper, we propose a framework that utilises the neuroscientific concept of functional connectivity – a graph representation of statistical dependencies between events – as a scalable approach to acquire and maintain prior knowledge for causal inference-based RCA approaches in dynamic networks. We demonstrate on both synthetic and real world data that our proposed approach can provide significant speedups to existing causal inference approaches without significant loss of accuracy. Finally, we discuss the impact of the choice of user-defined parameters on causal inference accuracy and conclude that the framework can safely be deployed in the real world.
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