A Virtual Knowledge Graph Based Approach for Object-Centric Event Logs Extraction

Jing Xiong, Guohui Xiao, Tahir Emre Kalyci, Marco Montali, Zhenzhen Gu, and Diego Calvanese

Revised Selected Papers of the Process Mining Workshops (ICPM-WS 2022). Volume 468 of Lecture Notes in Business Information Processing. 2022.

Process mining is a family of techniques that support the analysis of operational processes based on event logs. Among the existing event log formats, the IEEE standard eXtensible Event Stream (XES) is the most widely adopted. In XES, each event must be related to a single case object, which may lead to convergence and divergence problems. To solve such issues, object-centric approaches become promising, where objects are the central notion and one event may refer to multiple objects. In particular, the Object-Centric Event Logs (OCEL) standard has been proposed recently. However, the crucial problem of extracting OCEL logs from external sources is still largely unexplored. In this paper, we try to fill this gap by leveraging the Virtual Knowledge Graph (VKG) approach to access data in relational databases. We have implemented this approach in the OnProm system, extending it to support both XES and OCEL standards. We have carried out an experiment with OnProm over the Dolibarr system. The evaluation results confirm that OnProm can effectively extract OCEL logs and the performance is scalable.


@inproceedings{PQMI-2022,
   title = "A Virtual Knowledge Graph Based Approach for Object-Centric
Event Logs Extraction",
   year = "2022",
   author = "Jing Xiong and Guohui Xiao and Kalyci, Tahir Emre and Marco
Montali and Zhenzhen Gu and Diego Calvanese",
   booktitle = "Revised Selected Papers of the Process Mining Workshops
(ICPM-WS 2022)",
   pages = "466--478",
   volume = "468",
   publisher = "Springer",
   series = "Lecture Notes in Business Information Processing",
   doi = "10.1007/978-3-031-27815-0_34",
}
pdf url