Drodt C, Weinzierl S, Matzner M, Delfmann P (2023)
Publication Language: English
Publication Type: Conference contribution, Conference Contribution
Publication year: 2023
Pages Range: 1-8
Conference Proceedings Title: Proceedings of the 35th International Conference on Advanced Information Systems Engineering Forum
Event location: Zaragoza
DOI: 10.1007/978-3-031-34674-3_9
A variety of predictive process monitoring techniques based on machine learning (ML) have been proposed to improve the performance of operational processes. Existing techniques suggest different ML algorithms for training predictive models and are often optimized based on a small set of event logs. Consequently, practitioners face the challenge of finding an appropriate ML algorithm for a given event log. To overcome this challenge, this paper proposes \emph{Predictive Recommining}, a framework for suggesting an ML algorithm and a sequence encoding technique for creating process predictions based on a new event log's characteristics (e.g., loops, number of traces, number of joins/splits). We show that our instantiated framework can create correct recommendations for the next activity prediction task.
APA:
Drodt, C., Weinzierl, S., Matzner, M., & Delfmann, P. (2023). Predictive Recommining: Learning relations between event log characteristics and machine learning approaches for supporting predictive process monitoring. In Proceedings of the 35th International Conference on Advanced Information Systems Engineering Forum (pp. 1-8). Zaragoza.
MLA:
Drodt, Christoph, et al. "Predictive Recommining: Learning relations between event log characteristics and machine learning approaches for supporting predictive process monitoring." Proceedings of the International Conference on Advanced Information Systems Engineering, Zaragoza 2023. 1-8.
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