A Survey on Concept Drift in Process Mining
Machine Learning
2021-12-06 v1 Databases
Abstract
Concept drift in process mining (PM) is a challenge as classical methods assume processes are in a steady-state, i.e., events share the same process version. We conducted a systematic literature review on the intersection of these areas, and thus, we review concept drift in process mining and bring forward a taxonomy of existing techniques for drift detection and online process mining for evolving environments. Existing works depict that (i) PM still primarily focuses on offline analysis, and (ii) the assessment of concept drift techniques in processes is cumbersome due to the lack of common evaluation protocol, datasets, and metrics.
Keywords
Cite
@article{arxiv.2112.02000,
title = {A Survey on Concept Drift in Process Mining},
author = {Denise Maria Vecino Sato and Sheila Cristiana de Freitas and Jean Paul Barddal and Edson Emilio Scalabrin},
journal= {arXiv preprint arXiv:2112.02000},
year = {2021}
}
Comments
38 pages, ACM Computing Surveys