Process models generated through process mining depict the as-is state of a process. Through annotations with metrics such as the frequency or duration of activities, these models provide generic information to the process analyst. To improve business processes with respect to performance measures, process analysts require further guidance from the process model. In this study, we design Graph Relevance Miner (GRM), a technique based on graph neural networks, to determine the relevance scores for process activities with respect to performance measures. Annotating process models with such relevance scores facilitates a problem-focused analysis of the business process, placing these problems at the centre of the analysis. We quantitatively evaluate the predictive quality of our technique using four datasets from different domains, to demonstrate the faithfulness of the relevance scores. Furthermore, we present the results of a case study, which highlight the utility of the technique for organisations. Our work has important implications both for research and business applications, because process model-based analyses feature shortcomings that need to be urgently addressed to realise successful process mining at an enterprise level.
翻译:通过过程采矿产生的过程模型描述过程的状态。通过说明,如活动的频率或持续时间等指标,这些模型向过程分析员提供一般信息。为了改进与业绩措施有关的业务流程,程序分析员需要从过程模型得到进一步的指导。在本研究中,我们设计了基于图形神经网络的“与关联的采矿者”技术,以确定与业绩措施有关的过程活动的相关分数。带有这种相关性的流程模型有助于对业务流程进行以问题为重点的分析,并将这些问题置于分析的中心。我们用来自不同领域的四个数据集对技术的预测质量进行定量评估,以显示相关分数的准确性。此外,我们介绍了一项案例研究的结果,其中强调了该技术对各组织的实用性。我们的工作对研究和企业应用都有重要的影响,因为基于过程模型的分析揭示了实现企业一级成功进程采矿所急需解决的缺陷。