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Discovering and Navigating a Collection of Process Models Using Multiple Quality Dimensions

机译:使用多种质量尺寸发现和导航流程模型集合

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Process discovery algorithms typically aim at discovering a process model from an event log that best describes the recorded behavior. However, multiple quality dimensions can be used to evaluate a process model. In previous work we showed that there often is not one single process model that describes the observed behavior best in all quality dimensions. Therefore, we present an extension to our flexible ETM algorithm that does not result in a single best process model but in a collection of mutually non-dominating process models. This is achieved by constructing a Pareto front of process models. We show by applying our approach on a real life event log that the resulting collection of process models indeed contains several good candidates. Furthermore, by presenting a collection of process models, we show that it allows the user to investigate the different trade-offs between different quality dimensions.
机译:过程发现算法通常旨在从最能描述记录行为的事件日志中发现进程模型。然而,可以使用多种质量尺寸来评估过程模型。在以前的工作中,我们展示通常没有一个单一的过程模型,它描述了所有质量尺寸最佳的观察到的行为。因此,我们向我们的灵活ETM算法提出了一个扩展,这些算法不会导致单一的最佳过程模型,而是在相互非主导过程模型的集合中。这是通过构造过程模型的帕累托前面来实现的。我们通过在现实生活中将方法应用于现实生活日志来表明,生成的流程模型的收集确实包含了几个好候选人。此外,通过呈现一个过程模型的集合,我们表明它允许用户研究不同质量维度之间的不同权衡。

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