Title
Human-Centered Approaches to Fair and Responsible AI
Abstract
As AI changes the way decisions are made in organizations and governments, it is ever more important to ensure that these systems work according to values that diverse users and groups find important. Researchers have proposed numerous algorithmic techniques to formalize statistical fairness notions, but emerging work suggests that AI systems must account for the real-world contexts in which they will be embedded in order to actually work fairly. These findings call for an expanded research focus beyond statistical fairness to that which includes fundamental understandings of human use and the social impact of AI systems, a theme central to the HCI community. The HCI community can contribute novel understandings, methods, and techniques for incorporating human values and cultural norms into AI systems; address human biases in developing and using AI; and empower individual users and society to audit and control AI systems. Our goal is to bring together academic and industry researchers in the fields of HCI, ML and AI, and the social sciences to devise a cross-disciplinary research agenda for fair and responsible AI systems. This workshop will build on previous algorithmic fairness workshops at AI and ML conferences, map research and design opportunities for future innovations, and disseminate them in each community.
Year
DOI
Venue
2020
10.1145/3334480.3375158
CHI '20: CHI Conference on Human Factors in Computing Systems Honolulu HI USA April, 2020
Keywords
DocType
ISBN
Algorithmic fairness, accountability, ethics
Conference
978-1-4503-6819-3
Citations 
PageRank 
References 
0
0.34
0
Authors
7
Name
Order
Citations
PageRank
Min Kyung Lee170850.90
Nina Grgić-Hlača200.68
Michael Carl Tschantz346631.72
Reuben Binns46111.25
Adrian Weller514127.59
Michelle Carney611.38
Kori Inkpen7302.01