Drodt C, Weinzierl S, Matzner M, Delfmann P (2021)
Publication Language: English
Publication Type: Conference contribution, Conference Contribution
Publication year: 2021
Pages Range: 131-135
Conference Proceedings Title: Proceedings of the BPM 2021 Demonstration & Resources Track, Best BPM Dissertation Award, and Doctoral Consortium
Predictive business process monitoring (PBPM) provides a
set of techniques to optimize the performance of operational business
processes. Most recent PBPM techniques learn predictive models from
historical event log data using machine learning algorithms (ML). However, there is no silver bullet approach for different event logs, and their
performance depends on the characteristics of the underlying event logs.
This paper demonstrates the decision support tool Recomminder. The
main idea of our tool is to recommend an appropriate pre-processing
procedure, an ML algorithm, and the hyper-parameter configuration for
a new event log based on its characteristics. While our tool can support
researchers to better understand the relation between event log characteristics and ML-driven PBPM techniques, it supports practitioners in
developing effective PBPM techniques.
APA:
Drodt, C., Weinzierl, S., Matzner, M., & Delfmann, P. (2021). The recomminder: A decision support tool for predictive business process monitoring. In Proceedings of the BPM 2021 Demonstration & Resources Track, Best BPM Dissertation Award, and Doctoral Consortium (pp. 131-135). Rom, IT.
MLA:
Drodt, Christoph, et al. "The recomminder: A decision support tool for predictive business process monitoring." Proceedings of the International Conference on Business Process Management, Rom 2021. 131-135.
BibTeX: Download