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Association Rules for Anomaly Detection and Root Cause Analysis in Process Executions

机译:流程执行中异常检测和根本原因分析的关联规则

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Existing business process anomaly detection approaches typically fall short in supporting experts when analyzing identified anomalies. Hereby, false positives and insufficient anomaly countermeasures might impact an organization in a severely negative way. This work tackles this limitation by basing anomaly detection on association rule mining. It will be shown that doing so enables to explain anomalies, support process change and flexible executions, and to facilitate the estimation of anomaly severity. As a consequence, the risk of choosing an inappropriate countermeasure is likely reduced which, for example, helps to avoid the termination of benign process executions due to mistaken anomalies and false positives. The feasibility of the proposed approach is shown based on a publicly available prototypical implementation as well as by analyzing real life logs with injected artificial anomalies.
机译:在分析已发现的异常时,现有的业务流程异常检测方法通常无法为专家提供支持。因此,误报和不足的异常对策可能会对组织产生严重的负面影响。这项工作通过基于关联规则挖掘的异常检测来解决此限制。将表明这样做可以解释异常,支持流程更改和灵活执行,并有助于估计异常严重性。结果,可以减少选择不适当对策的风险,例如,这有助于避免由于错误的异常和误报而导致的良性过程执行终止。基于公开可用的原型实现以及通过分析注入的人工异常的真实日志,显示了所提出方法的可行性。

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