The Role of Explanation Styles and Perceived Accuracy on Decision Making in Predictive Process Monitoring

Publication date

2025-06-15

Authors

Chae, Soobin
Lee, SuhwanORCID 0000-0001-8089-0960ISNI 0000000512552045
Hauptmann, HannaORCID 0000-0002-6840-5341ISNI 0000000507309761
Reijers, H.A.ORCID 0000-0001-9634-5852ISNI 0000000037238136
Lu, XixiISNI 0000000492910684

Editors

Krogstie, John
Rinderle-Ma, Stefanie
Kappel, Gerti
Proper, Henderik A.

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

taverne

Abstract

Predictive Process Monitoring (PPM) often uses deep learning models to predict the future behavior of ongoing processes, such as predicting process outcomes. While these models achieve high accuracy, their lack of interpretability undermines user trust and adoption. Explainable AI (XAI) aims to address this challenge by providing the reasoning behind the predictions. However, current evaluations of XAI in PPM focus primarily on functional metrics (such as fidelity), overlooking user-centered aspects such as their effect on task performance and decision-making. This study investigates the effects of explanation styles (feature importance, rule-based, and counterfactual) and perceived AI accuracy (low or high) on decision-making in PPM. We conducted a decision-making experiment, where users were presented with the AI predictions, perceived accuracy levels, and explanations of different styles. Users’ decisions were measured both before and after receiving explanations, allowing the assessment of objective metrics (Task Performance and Agreement) and subjective metrics (Decision Confidence). Our findings show that perceived accuracy and explanation style have a significant effect.

Keywords

Counterfactuals, Explainable AI, Feature importance, Rule base explanations, User evaluation, Theoretical Computer Science, General Computer Science

Citation

Chae, S, Lee, S, Hauptmann, H, Reijers, H A & Lu, X 2025, The Role of Explanation Styles and Perceived Accuracy on Decision Making in Predictive Process Monitoring. in J Krogstie, S Rinderle-Ma, G Kappel & H A Proper (eds), Advanced Information Systems Engineering - 37th International Conference, CAiSE 2025, Proceedings. Lecture Notes in Computer Science, vol. 15702 , Springer, pp. 39-56. https://doi.org/10.1007/978-3-031-94571-7_3