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Detecting Deviating Behaviors Without Models

机译:在没有模型的情况下检测偏差行为

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摘要

Deviation detection is a set of techniques that identify deviations from normative processes in real process executions. These diagnostics are used to derive recommendations for improving business processes. Existing detection techniques identify deviations either only on the process instance level or rely on a normative process model to locate deviating behavior on the event level. However, when normative models are not available, these techniques detect deviations against a less accurate model discovered from the actual behavior, resulting in incorrect diagnostics. In this paper, we propose a novel approach to detect deviation on the event level by identifying frequent common behavior and uncommon behavior among executed process instances, without discovering any normative model. The approach is implemented in ProM and was evaluated in a controlled setting with artificial logs and real-life logs. We compare our approach to existing approaches to investigate its possibilities and limitations. We show that in some cases, it is possible to detect deviating events without a model as accurately as against a given precise normative model.
机译:偏差检测是识别实际流程执行中与规范流程的偏差的一组技术。这些诊断用于得出改进业务流程的建议。现有的检测技术仅在流程实例级别或依靠规范流程模型来识别偏差,以在事件级别上定位偏离行为。但是,当没有可用的规范模型时,这些技术会检测与实际行为中发现的较不准确的模型之间的偏差,从而导致错误的诊断。在本文中,我们提出了一种新颖的方法,该方法通过识别执行的流程实例之间的常见行为和不常见行为来发现事件级别的偏差,而无需发现任何规范模型。该方法在ProM中实现,并在带有人工日志和真实日志的受控环境中进行了评估。我们将我们的方法与现有方法进行比较,以研究其可能性和局限性。我们表明,在某些情况下,无需模型就可以像对给定的精确规范模型一样准确地检测出偏差事件。

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