Paper by Michele Loi and Markus Christen: “Here we provide an ethical analysis of discrimination in private insurance to guide the application of non-discriminatory algorithms for risk prediction in the insurance context. This addresses the need for ethical guidance of data-science experts and business managers. The reference to private insurance as a business practice is essential in our approach, because the consequences of discrimination and predictive inaccuracy in underwriting are different from those of using predictive algorithms in other sectors (e.g. medical diagnosis, sentencing). Moreover, the computer science literature has demonstrated the existence of a trade-off in the extent to which one can pursue non- discrimination versus predictive accuracy. Again the moral assessment of this trade-off is related to the context of application…(More)”
Insurance Discrimination and Fairness in Machine Learning: An Ethical Analysis
How to contribute:
Did you come across – or create – a compelling project/report/book/app at the leading edge of innovation in governance?
Share it with us at info@thelivinglib.org so that we can add it to the Collection!
About the Curator
Get the latest news right in your inbox
Subscribe to curated findings and actionable knowledge from The Living Library, delivered to your inbox every Friday
Related articles
Artificial Intelligence
DATA
The Context Loop: How AI Remembers Us, and Shapes Digital Self-Determination
Posted in May 7, 2026 by Stefaan Verhulst
Civic Technology
Design Thinking
E-Gov
INSTITUTIONAL INNOVATION
Signals from the Frontier of Digital Statecraft: Rethinking governance in the age of AI
Posted in May 7, 2026 by Stefaan Verhulst
DATA
Data Collaboratives
Open Data
Non-Traditional Data in Pandemic Preparedness and Response: Identifying and Addressing First- and Last-Mile Challenges
Posted in May 7, 2026 by Stefaan Verhulst