Transforming Football Data into Object-centric Event Logs with Spatial Context Information
This provides a first example of object-centric event logs for football analytics, addressing a gap in process mining applications for team sports.
The paper tackles the limited availability of real-world object-centric event logs by developing a framework to transform football data into such logs with spatial context, demonstrating its effectiveness using real-world data and varying process representations.
Object-centric event logs expand the conventional single-case notion event log by considering multiple objects, allowing for the analysis of more complex and realistic process behavior. However, the number of real-world object-centric event logs remains limited, and further studies are needed to test their usefulness. The increasing availability of data from team sports can facilitate object-centric process mining, leveraging both real-world data and suitable use cases. In this paper, we present a framework for transforming football (soccer) data into an object-centric event log, further enhanced with a spatial dimension. We demonstrate the effectiveness of our framework by generating object-centric event logs based on real-world football data and discuss the results for varying process representations. With our paper, we provide the first example for object-centric event logs in football analytics. Future work should consider variant analysis and filtering techniques to better handle variability