Publisher URL: https://ceur-ws.org/Vol-4132/short40.pdf
http://nbn-resolving.de/urn:nbn:de:0074-4132-x
Title: Rethinking trust in responsible AI
Language: English
Authors: Tropmann-Frick, Marina  
Gille, Michael 
Draheim, Susanne  
Pommerencke, Philine 
Kiener, Maximilian 
Bozenhard, Jonas 
Editor: Følstad, Asbjørn 
Apostolou, Dimitris 
Taylor, Steve 
Palumbo, Andrea 
Tsalapati, Eleni 
Stamatellos, Giannis 
Catelli, Rosario 
Keywords: Responsible AI; trust; trustworthy AI; AI governance; boundary concept; interdisciplinarity
Issue Date: 16-Dec-2025
Publisher: RWTH Aachen
Part of Series: TRUST-AI 2025: the European Workshop on Trustworthy AI 2025 : proceedings of TRUST-AI 2025 - the European Workshop on Trustworthy AI, co-located with the 28th European Conference on Artificial Intelligence (ECAI 2025) : Bologna, Italy, October 25-26, 2025 
Journal or Series Name: CEUR workshop proceedings 
Volume: 4132
Startpage: 112
Endpage: 119
Conference: European Workshop on Trustworthy AI 2025 
Abstract: 
Trust is widely recognized as a core principle of Responsible AI, yet its interpretation varies significantly across disciplines. This paper examines how computer science, sociology, philosophy, and law conceptualize trust in AI systems, highlighting both tensions and complementarities. From a computer science perspective, trust is often approached as a set of system-level properties that should be formalized and evaluated with metrics. In contrast, the social sciences and humanities emphasize its relational, normative, and institutional dimensions. We argue that trust cannot be reduced to a single system property or technical measure, as it emerges from social-technical interactions involving users, developers, legal norms, and social expectations. To support interdisciplinary dialogue, we propose treating trust as a boundary concept that enables cooperation across epistemic communities acknowledging conceptual differences. Trust is widely recognized as a core principle of Responsible AI, yet its interpretation varies significantly across disciplines. This paper examines how computer science, sociology, philosophy, and law conceptualize trust in AI systems, highlighting both tensions and complementarities. From a computer science perspective, trust is often approached as a set of system-level properties that should be formalized and evaluated with metrics. In contrast, the social sciences and humanities emphasize its relational, normative, and institutional dimensions. We argue that trust cannot be reduced to a single system property or technical measure, as it emerges from social-technical interactions involving users, developers, legal norms, and social expectations. To support interdisciplinary dialogue, we propose treating trust as a boundary concept that enables cooperation across epistemic communities acknowledging conceptual differences.
URI: https://hdl.handle.net/20.500.12738/19623
ISSN: 1613-0073
Review status: This version was peer reviewed (peer review)
Institute: Fakultät Management, Governance und Medien 
Fakultät Informatik und Digitale Gesellschaft 
Forschungs- und Transferzentrum Smart Systems 
Type: Chapter/Article (Proceedings)
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