Authors
Bowen Yu, Ye Yuan, Loren Terveen, Zhiwei Steven Wu, Jodi Forlizzi, Haiyi Zhu
Publication date
2020/7/3
Book
Proceedings of the 2020 ACM designing interactive systems conference
Pages
1245-1257
Description
Artificial intelligence algorithms have been used to enhance a wide variety of products and services, including assisting human decision making in high-stake contexts. However, these algorithms are complex and have trade-offs, notably between prediction accuracy and fairness to population subgroups. This makes it hard for designers to understand algorithms and design products or services in a way that respects users' goals, values, and needs. We proposed a method to help designers and users explore algorithms, visualize their trade-offs, and select algorithms with trade-offs consistent with their goals and needs. We evaluated our method on the problem of predicting criminal defendants' likelihood to re-offend through (i) a large-scale Amazon Mechanical Turk experiment, and (ii) in-depth interviews with domain experts. Our evaluations show that our method can help designers and users of these systems …
Total citations
201920202021202220232024141112256
Scholar articles
B Yu, Y Yuan, L Terveen, ZS Wu, J Forlizzi, H Zhu - Proceedings of the 2020 ACM designing interactive …, 2020
B Yu, Y Yuan, L Terveen, S Wu, H Zhu - Scanning Electron Microsc Meet at, 2019