Crossref Citations
This article has been cited by the following publications. This list is generated based on data provided by
Crossref.
Duede, Eamon
2022.
Instruments, agents, and artificial intelligence: novel epistemic categories of reliability.
Synthese,
Vol. 200,
Issue. 6,
Ross, Amber
2022.
AI and the expert; a blueprint for the ethical use of opaque AI.
AI & SOCIETY,
Duede, Eamon
2023.
Deep Learning Opacity in Scientific Discovery.
Philosophy of Science,
Vol. 90,
Issue. 5,
p.
1089.
Brand, Joshua
2023.
Exploring the Moral Value of Explainable Artificial Intelligence Through Public Service Postal Banks.
p.
990.
Da Silva, Michael
2023.
Explainability, Public Reason, and Medical Artificial Intelligence.
Ethical Theory and Moral Practice,
Vol. 26,
Issue. 5,
p.
743.
Søgaard, Anders
2023.
On the Opacity of Deep Neural Networks.
Canadian Journal of Philosophy,
Vol. 53,
Issue. 3,
p.
224.
Zanotti, Giacomo
Petrolo, Mattia
Chiffi, Daniele
and
Schiaffonati, Viola
2023.
Keep trusting! A plea for the notion of Trustworthy AI.
AI & SOCIETY,
Narayanan, Devesh
2023.
Welfarist Moral Grounding for Transparent AI.
p.
64.
Grant, David Gray
Behrends, Jeff
and
Basl, John
2023.
What we owe to decision-subjects: beyond transparency and explanation in automated decision-making.
Philosophical Studies,
Peters, Uwe
2023.
Explainable AI lacks regulative reasons: why AI and human decision-making are not equally opaque.
AI and Ethics,
Vol. 3,
Issue. 3,
p.
963.
Ball, Brian
and
Koliousis, Alexandros
2023.
Training philosopher engineers for better AI.
AI & SOCIETY,
Vol. 38,
Issue. 2,
p.
861.
Longo, Luca
Brcic, Mario
Cabitza, Federico
Choi, Jaesik
Confalonieri, Roberto
Ser, Javier Del
Guidotti, Riccardo
Hayashi, Yoichi
Herrera, Francisco
Holzinger, Andreas
Jiang, Richard
Khosravi, Hassan
Lecue, Freddy
Malgieri, Gianclaudio
Páez, Andrés
Samek, Wojciech
Schneider, Johannes
Speith, Timo
and
Stumpf, Simone
2024.
Explainable Artificial Intelligence (XAI) 2.0: A manifesto of open challenges and interdisciplinary research directions.
Information Fusion,
Vol. 106,
Issue. ,
p.
102301.
Räz, Tim
2024.
ML interpretability: Simple isn't easy.
Studies in History and Philosophy of Science,
Vol. 103,
Issue. ,
p.
159.
Gross, Fridolin
2024.
The Explanatory Role of Machine Learning in Molecular Biology.
Erkenntnis,
Brand, Joshua L. M.
2024.
The misdirected approach of open source algorithms.
AI & SOCIETY,
Vol. 39,
Issue. 2,
p.
807.
Bao, Aorigele
and
Zeng, Yi
2024.
Understanding the dilemma of explainable artificial intelligence: a proposal for a ritual dialog framework.
Humanities and Social Sciences Communications,
Vol. 11,
Issue. 1,