Artificial Intelligence (AI)-based systems are experiencing widespread adoption across a broad range of applications, including critical domains such as law and healthcare. This paradigm shift prompted a push towards the development of trustworthy AI systems, which are increasingly mandated by law and regulations. However, assessment techniques that concretely verify the trustworthiness of AI-based systems are still lacking. Current techniques in fact focus on traditional quality properties, providing either high-level guidelines or low-level techniques that cannot be generalized, and are therefore not applicable to AI-based systems. In this paper, we propose an assessment scheme that builds on a structured catalog of non-functional properties. The support for specific non-functional properties is verified along the entire system life cycle, from data collection to evaluation, by a set of assessment controls.

Towards the Assessment of Trustworthy AI: A Catalog-Based Approach / M. Anisetti, C.A. Ardagna, N. Bena, A. Nasim (CEUR WORKSHOP PROCEEDINGS). - In: TRUST-AI 2025 : The European Workshop on Trustworthy AI 2025 / [a cura di] A. Følstad, D. Apostolou, S. Taylor, A. Palumbo, E. Tsalapati, G. Stamatellos, R. Catelli. - [s.l] : CEUR-WS, 2025 Dec 16. - pp. 151-159 (( Proceedings of TRUST-AI 2025 - The European Workshop on Trustworthy AI co-located with the 28th European Conference on Artificial Intelligence Bologna 2025.

Towards the Assessment of Trustworthy AI: A Catalog-Based Approach

M. Anisetti;C.A. Ardagna;N. Bena;
2025

Abstract

Artificial Intelligence (AI)-based systems are experiencing widespread adoption across a broad range of applications, including critical domains such as law and healthcare. This paradigm shift prompted a push towards the development of trustworthy AI systems, which are increasingly mandated by law and regulations. However, assessment techniques that concretely verify the trustworthiness of AI-based systems are still lacking. Current techniques in fact focus on traditional quality properties, providing either high-level guidelines or low-level techniques that cannot be generalized, and are therefore not applicable to AI-based systems. In this paper, we propose an assessment scheme that builds on a structured catalog of non-functional properties. The support for specific non-functional properties is verified along the entire system life cycle, from data collection to evaluation, by a set of assessment controls.
Artificial Intelligence; Assessment; Non-functional property; Trustworthy AI
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16-dic-2025
https://ceur-ws.org/Vol-4132/short42.pdf
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1205918
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