This paper presents an approach for identifying the root causes of collective anomalies given observational time series and an acyclic summary causal graph which depicts an abstraction of causal relations present in a dynamic system at its normal regime. The paper first shows how the problem of root cause identification can be divided into many independent subproblems by grouping related anomalies using d-separation. Further, it shows how, under this setting, some root causes can be found directly from the graph and from the time of appearance of anomalies. Finally, it shows, how the rest of the root causes can be found by comparing direct causal effects in the normal and in the anomalous regime. To this end, temporal adaptations of the back-door and the single-door criterions are introduced. Extensive experiments conducted on both simulated and real-world datasets demonstrate the effectiveness of the proposed method.
翻译:本文介绍了一种方法,用以根据观察时间序列确定集体异常现象的根源,以及一个循环性因果汇总图,该图描绘了正常制度动态系统中存在的因果关系的抽象性。本文件首先说明了如何通过使用 d 分离组合相关的异常现象,将根本原因识别问题分为许多独立的子问题。此外,它说明了在这一背景下,如何直接从图表和异常现象出现时找到某些根源。最后,它表明如何通过比较正常和异常制度中的直接因果影响来找到其余的根源。为此,引入了后门和单门标准的时间调整。对模拟和现实世界数据集进行的广泛实验显示了拟议方法的有效性。</s>