Process mining provides various algorithms to analyze process executions based on event data. Process discovery, the most prominent category of process mining techniques, aims to discover process models from event logs, however, it leads to spaghetti models when working with real-life data. Therefore, several clustering techniques have been proposed on top of traditional event logs (i.e., event logs with a single case notion) to reduce the complexity of process models and discover homogeneous subsets of cases. Nevertheless, in real-life processes, particularly in the context of Business-to-Business (B2B) processes, multiple objects are involved in a process. Recently, Object-Centric Event Logs (OCELs) have been introduced to capture the information of such processes, and several process discovery techniques have been developed on top of OCELs. Yet, the output of the proposed discovery techniques on real OCELs leads to more informative but also more complex models. In this paper, we propose a clustering-based approach to cluster similar objects in OCELs to simplify the obtained process models. Using a case study of a real B2B process, we demonstrate that our approach reduces the complexity of the process models and generates coherent subsets of objects which help the end-users gain insights into the process.
翻译:过程发现是过程采矿技术中最突出的一类,目的是从事件日志中发现过程模型,然而,在使用实际数据时,它导致意大利面粉模型,因此,在传统事件日志(即具有单一案例概念的事件日志)之上提出了几种程序发现技术,以减少过程模型的复杂性并发现案件同类子集。然而,在实际生活中,特别是在企业对企业(B2B)进程的背景下,多个物体参与了一个过程。最近,采用了物体对事件日志(OCELs)来捕捉这些过程的信息,并在OCELs顶端开发了几种程序发现技术。然而,关于实际OCELs的拟议发现技术的输出使过程更加复杂,但也更复杂。在这份文件中,我们建议采用基于集群的办法,将OCELs的类似物体集中起来,以简化获得的过程模型。最近,对实际的B2B目标进行了个案研究,以捕捉到这些过程的信息,并在OCELs顶端开发了几种过程。我们证明,我们的方法降低了对模型的复杂度,并降低了其尾端理解。