TY - UNPB
T1 - Technologies for Trustworthy Machine Learning
T2 - A Survey in a Socio-Technical Context
AU - Toreini, Ehsan
AU - Aitken, Mhairi
AU - Coopamootoo, Kovila P. L.
AU - Elliott, Karen
AU - Zelaya, Vladimiro Gonzalez
AU - Missier, Paolo
AU - Ng, Magdalene
AU - Moorsel, Aad van
N1 - We are updating some sections to include more recent advances
PY - 2020/7/17
Y1 - 2020/7/17
N2 - Concerns about the societal impact of AI-based services and systems has encouraged governments and other organisations around the world to propose AI policy frameworks to address fairness, accountability, transparency and related topics. To achieve the objectives of these frameworks, the data and software engineers who build machine-learning systems require knowledge about a variety of relevant supporting tools and techniques. In this paper we provide an overview of technologies that support building trustworthy machine learning systems, i.e., systems whose properties justify that people place trust in them. We argue that four categories of system properties are instrumental in achieving the policy objectives, namely fairness, explainability, auditability and safety & security (FEAS). We discuss how these properties need to be considered across all stages of the machine learning life cycle, from data collection through run-time model inference. As a consequence, we survey in this paper the main technologies with respect to all four of the FEAS properties, for data-centric as well as model-centric stages of the machine learning system life cycle. We conclude with an identification of open research problems, with a particular focus on the connection between trustworthy machine learning technologies and their implications for individuals and society.
AB - Concerns about the societal impact of AI-based services and systems has encouraged governments and other organisations around the world to propose AI policy frameworks to address fairness, accountability, transparency and related topics. To achieve the objectives of these frameworks, the data and software engineers who build machine-learning systems require knowledge about a variety of relevant supporting tools and techniques. In this paper we provide an overview of technologies that support building trustworthy machine learning systems, i.e., systems whose properties justify that people place trust in them. We argue that four categories of system properties are instrumental in achieving the policy objectives, namely fairness, explainability, auditability and safety & security (FEAS). We discuss how these properties need to be considered across all stages of the machine learning life cycle, from data collection through run-time model inference. As a consequence, we survey in this paper the main technologies with respect to all four of the FEAS properties, for data-centric as well as model-centric stages of the machine learning system life cycle. We conclude with an identification of open research problems, with a particular focus on the connection between trustworthy machine learning technologies and their implications for individuals and society.
KW - cs.LG
KW - cs.AI
KW - cs.CR
KW - cs.CY
KW - stat.ML
U2 - 10.48550/arXiv.2007.08911
DO - 10.48550/arXiv.2007.08911
M3 - Preprint
BT - Technologies for Trustworthy Machine Learning
PB - arXiv
ER -