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Abstract-and-Compare: A Family of Scalable Precision Measures for Automated Process Discovery

机译:摘要和比较:用于自动化过程发现的可扩展精度度量标准系列

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Automated process discovery techniques allow us to extract business process models from event logs. The quality of models discovered by these techniques can be assessed with respect to various criteria related to simplicity and accuracy. One of these criteria, namely precision, captures the extent to which the behavior allowed by a process model is observed in the log. While several measures of precision have been proposed, a recent study has shown that none of them fulfills a set of five axioms that capture intuitive properties behind the concept of precision. In addition, existing precision measures suffer from scalability issues when applied to models discovered from real-life event logs. This paper presents a family of precision measures based on the idea of comparing the k-th order Markovian abstraction of a process model against that of an event log. We demonstrate that this family of measures fulfils the aforementioned axioms for a suitably chosen value of k. We also empirically show that representative exemplars of this family of measures outperform a commonly used precision measure in terms of scalability and that they closely approximate two precision measures that have been proposed as possible ground truths.
机译:自动化的流程发现技术使我们能够从事件日志中提取业务流程模型。可以根据与简单性和准确性相关的各种标准来评估通过这些技术发现的模型的质量。这些标准之一(即精度)捕获了在日志中观察到过程模型所允许的行为的程度。虽然已经提出了几种精度度量,但最近的一项研究表明,它们中的任何一个都不能满足一组五个公理,这些公理捕获了精度概念背后的直观属性。另外,当应用于从现实事件日志中发现的模型时,现有的精度度量会遭受可伸缩性问题。本文基于将过程模型的k阶马尔可夫抽象与事件日志的k阶马尔可夫抽象进行比较的思想,提出了一系列精度度量。我们证明了这个家庭的措施满足上述公理k的适当选择价值。我们还根据经验表明,在可扩展性方面,该系列度量的代表性示例优于常用的精确度量,并且它们近似逼近了已被提议为可能的基础事实的两个精确度量。

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