Bringing Light Into the Darkness - A Systematic Literature Review on Explainable Predictive Business Process Monitoring Techniques

Stierle Matthias, Brunk Jens, Weinzierl Sven, Zilker Sandra, Matzner Martin, Becker Jörg

Forschungsartikel in Online-Sammlung (Konferenz) | Peer reviewed

Zusammenfassung

Predictive business process monitoring (PBPM) provides a set of techniques to perform different prediction tasks in running business processes, such as the next activity, the process outcome, or the remaining time. Nowadays, deep-learning-based techniques provide more accurate predictive models. However, the explainability of these models has long been neglected. The predictive quality is essential for PBPM-based decision support systems, but also its explainability for human stakeholders needs to be considered. Explainable artificial intelligence (XAI) describes different approaches to make machine-learning-based techniques explainable. To examine the current state of explainable PBPM techniques, we perform a structured and descriptive literature review. We identify explainable PBPM techniques of the domain and classify them along with different XAI-related concepts: prediction purpose, intrinsically interpretable or post-hoc, evaluation objective, and evaluation method. Based on our classification, we identify trends in the domain and remaining research gaps.

Details zur Publikation

Name des RepositoriumsAIS eLibrary
Artikelnummer1175
StatusVeröffentlicht
Veröffentlichungsjahr2021
Sprache, in der die Publikation verfasst istEnglisch
KonferenzEuropean Conference on Information Systems 2021, Marrackech, Marokko
Link zum Volltexthttps://aisel.aisnet.org/ecis2021_rip/8/
Stichwörterbusiness process, prediction, interpretability, explainable artificial intelligence.

Autor*innen der Universität Münster

Becker, Jörg
Lehrstuhl für Wirtschaftsinformatik und Informationsmanagement (Prof. Becker) (IS)
Brunk, Jens
Lehrstuhl für Wirtschaftsinformatik und Informationsmanagement (Prof. Becker) (IS)