Konstantinos Mavrogiorgos, Shlomit Gur, et al.
DCOSS-IoT 2025
Autonomous business processes (ABPs), i.e., self-executing workflows leveraging AI/ML, have the potential to improve operational efficiency, reduce errors, lower costs, improve response times, and free human workers for more strategic and creative work. However, ABPs may raise specific concerns including decreased stakeholder trust, difficulties in debugging, hindered accountability, risk of bias, and issues with regulatory compliance. We argue for eXplainable ABPs (XABPs) to address these concerns by enabling systems to articulate their rationale. The paper outlines a systematic approach to XABPs, characterizing their forms, structuring explainability, and identifying key BPM research challenges towards XABPs.
Konstantinos Mavrogiorgos, Shlomit Gur, et al.
DCOSS-IoT 2025
Sahil Suneja, Yufan Zhuang, et al.
EuroS&P 2023
Mateo Espinosa Zarlenga, Gabriele Dominici, et al.
ICML 2025
Kohei Miyaguchi, Masao Joko, et al.
ASMC 2025