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Main Authors: Mehrotra, Siddharth, Huang, Jin, Fu, Xuelong, Dobbe, Roel, Sánchez, Clara I., de Rijke, Maarten
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.21293
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author Mehrotra, Siddharth
Huang, Jin
Fu, Xuelong
Dobbe, Roel
Sánchez, Clara I.
de Rijke, Maarten
author_facet Mehrotra, Siddharth
Huang, Jin
Fu, Xuelong
Dobbe, Roel
Sánchez, Clara I.
de Rijke, Maarten
contents Background: Trustworthy AI serves as a foundational pillar for two major AI ethics conferences: AIES and FAccT. However, current research often adopts techno-centric approaches, focusing primarily on technical attributes such as reliability, robustness, and fairness, while overlooking the sociotechnical dimensions critical to understanding AI trustworthiness in real-world contexts. Objectives: This scoping review aims to examine how the AIES and FAccT communities conceptualize, measure, and validate AI trustworthiness, identifying major gaps and opportunities for advancing a holistic understanding of trustworthy AI systems. Methods: We conduct a scoping review of AIES and FAccT conference proceedings to date, systematically analyzing how trustworthiness is defined, operationalized, and applied across different research domains. Our analysis focuses on conceptualization approaches, measurement methods, verification and validation techniques, application areas, and underlying values. Results: While significant progress has been made in defining technical attributes such as transparency, accountability, and robustness, our findings reveal critical gaps. Current research often predominantly emphasizes technical precision at the expense of social and ethical considerations. The sociotechnical nature of AI systems remains less explored and trustworthiness emerges as a contested concept shaped by those with the power to define it. Conclusions: An interdisciplinary approach combining technical rigor with social, cultural, and institutional considerations is essential for advancing trustworthy AI. We propose actionable measures for the AI ethics community to adopt holistic frameworks that genuinely address the complex interplay between AI systems and society, ultimately promoting responsible technological development that benefits all stakeholders.
format Preprint
id arxiv_https___arxiv_org_abs_2510_21293
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Understanding AI Trustworthiness: A Scoping Review of AIES & FAccT Articles
Mehrotra, Siddharth
Huang, Jin
Fu, Xuelong
Dobbe, Roel
Sánchez, Clara I.
de Rijke, Maarten
Artificial Intelligence
Human-Computer Interaction
Background: Trustworthy AI serves as a foundational pillar for two major AI ethics conferences: AIES and FAccT. However, current research often adopts techno-centric approaches, focusing primarily on technical attributes such as reliability, robustness, and fairness, while overlooking the sociotechnical dimensions critical to understanding AI trustworthiness in real-world contexts. Objectives: This scoping review aims to examine how the AIES and FAccT communities conceptualize, measure, and validate AI trustworthiness, identifying major gaps and opportunities for advancing a holistic understanding of trustworthy AI systems. Methods: We conduct a scoping review of AIES and FAccT conference proceedings to date, systematically analyzing how trustworthiness is defined, operationalized, and applied across different research domains. Our analysis focuses on conceptualization approaches, measurement methods, verification and validation techniques, application areas, and underlying values. Results: While significant progress has been made in defining technical attributes such as transparency, accountability, and robustness, our findings reveal critical gaps. Current research often predominantly emphasizes technical precision at the expense of social and ethical considerations. The sociotechnical nature of AI systems remains less explored and trustworthiness emerges as a contested concept shaped by those with the power to define it. Conclusions: An interdisciplinary approach combining technical rigor with social, cultural, and institutional considerations is essential for advancing trustworthy AI. We propose actionable measures for the AI ethics community to adopt holistic frameworks that genuinely address the complex interplay between AI systems and society, ultimately promoting responsible technological development that benefits all stakeholders.
title Understanding AI Trustworthiness: A Scoping Review of AIES & FAccT Articles
topic Artificial Intelligence
Human-Computer Interaction
url https://arxiv.org/abs/2510.21293