“…While the main focus of XAI research has been on explaining black-box machine learning systems (Lundberg & Lee, 2017;Guidotti, Monreale, Ruggieri, Turini, Giannotti, & Pedreschi, 2018;Ignatiev, Narodytska, & Marques-Silva, 2019), also model-based systems, which are typically considered more transparent, are in need of explanation mechanisms. For instance, Vassiliades, Bassiliades, and Patkos (2021) survey the important methods that use argumentation (Modgil, Toni, Bex, Bratko, Chesnevar, Dvořák, Falappa, Fan, Gaggl, García, et al, 2013) to provide explainability in AI, with for example applications in medical diagnosis (Obeid, Obeid, Moubaiddin, & Obeid, 2019). Abstract argumentation frameworks introduce an abstract formalism to explain argumentative acceptance ( Šešelja & Straßer, 2013;Liao & Van Der Torre, 2020;Ulbricht & Wallner, 2021).…”