Explainable predictive process monitoring: a user evaluation

Williams Rizzi, M. Comuzzi (Corresponding author), Chiara Di Francescomarino, Chiara Ghidini, Suhwan Lee, F.M. Maggi, Alexander Nolte

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Abstract

Explainability is motivated by the lack of transparency of black-box machine learning approaches, which do not foster trust and acceptance of machine learning algorithms. This also happens in the predictive process monitoring field, where predictions, obtained by applying machine learning techniques, need to be explained to users, so as to gain their trust and acceptance. In this work, we carry on a user evaluation on explanation approaches for predictive process monitoring aiming at investigating whether and how the explanations provided (i) are understandable; (ii) are useful in decision making tasks; (iii) can be further improved for process analysts with different predictive process monitoring expertise levels. The results of the user evaluation show that, although explanation plots are overall understandable and useful for decision making tasks for business process management users — with and without experience in predictive process monitoring — differences exist in the comprehension and usage of different plots, as well as in the way users with different predictive process monitoring expertise understand and use them.
Original languageEnglish
Article number3
Number of pages28
JournalProcess Science
Volume1
Issue number1
DOIs
Publication statusPublished - Dec 2024

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