Towards Knowledge-Centric Process Mining
Artificial Intelligence
2023-01-27 v1
Abstract
Process analytic approaches play a critical role in supporting the practice of business process management and continuous process improvement by leveraging process-related data to identify performance bottlenecks, extracting insights about reducing costs and optimizing the utilization of available resources. Process analytic techniques often have to contend with real-world settings where available logs are noisy or incomplete. In this paper we present an approach that permits process analytics techniques to deliver value in the face of noisy/incomplete event logs. Our approach leverages knowledge graphs to mitigate the effects of noise in event logs while supporting process analysts in understanding variability associated with event logs.
Cite
@article{arxiv.2301.10927,
title = {Towards Knowledge-Centric Process Mining},
author = {Asjad Khan and Arsal Huda and Aditya Ghose and Hoa Khanh Dam},
journal= {arXiv preprint arXiv:2301.10927},
year = {2023}
}