TY - JOUR
T1 - A.I. Robustness
T2 - a Human-Centered Perspective on Technological Challenges and Opportunities
AU - Tocchetti, Andrea
AU - Corti, Lorenzo
AU - Balayn, Agathe
AU - Yurrita, Mireia
AU - Lippmann, Philip
AU - Brambilla, Marco
AU - Yang, Jie
PY - 2025
Y1 - 2025
N2 - Despite the impressive performance of Artificial Intelligence (AI) systems, their robustness remains elusive and constitutes a key issue that impedes large-scale adoption. Besides, robustness is interpreted differently across domains and contexts of AI. In this work, we systematically survey recent progress to provide a reconciled terminology of concepts around AI robustness. We introduce three taxonomies to organize and describe the literature both from a fundamental and applied point of view: (1) methods and approaches that address robustness in different phases of the machine learning pipeline; (2) methods improving robustness in specific model architectures, tasks, and systems; and in addition, (3) methodologies and insights around evaluating the robustness of AI systems, particularly the tradeoffs with other trustworthiness properties. Finally, we identify and discuss research gaps and opportunities and give an outlook on the field. We highlight the central role of humans in evaluating and enhancing AI robustness, considering the necessary knowledge they can provide, and discuss the need for better understanding practices and developing supportive tools in the future.
AB - Despite the impressive performance of Artificial Intelligence (AI) systems, their robustness remains elusive and constitutes a key issue that impedes large-scale adoption. Besides, robustness is interpreted differently across domains and contexts of AI. In this work, we systematically survey recent progress to provide a reconciled terminology of concepts around AI robustness. We introduce three taxonomies to organize and describe the literature both from a fundamental and applied point of view: (1) methods and approaches that address robustness in different phases of the machine learning pipeline; (2) methods improving robustness in specific model architectures, tasks, and systems; and in addition, (3) methodologies and insights around evaluating the robustness of AI systems, particularly the tradeoffs with other trustworthiness properties. Finally, we identify and discuss research gaps and opportunities and give an outlook on the field. We highlight the central role of humans in evaluating and enhancing AI robustness, considering the necessary knowledge they can provide, and discuss the need for better understanding practices and developing supportive tools in the future.
KW - Artificial intelligence
KW - human-centered AI
KW - robustness
KW - trustworthy AI
UR - http://www.scopus.com/inward/record.url?scp=85208063138&partnerID=8YFLogxK
U2 - 10.1145/3665926
DO - 10.1145/3665926
M3 - Article
AN - SCOPUS:85208063138
SN - 0360-0300
VL - 57
JO - ACM Computing Surveys
JF - ACM Computing Surveys
IS - 6
M1 - 141
ER -