Traditional group fairness definitions are typically defined with
respect to a specified classification of people into protected groups,
despite many of these groupings being artificial. For instance, should
South and East Asians be viewed as a single group or separate groups?
Should we consider one race as a whole or further split groupings by
gender? Choosing which groups are valid and who belongs in them is an
impossible dilemma and being “fair” with respect to Asians may require
being “unfair” with respect to South Asians. Ideally, one would like
definitions that allow algorithms to be fair for any grouping.
We consider fairness in the context of generative procedures, such as
image super-resolution or inpainting. We show how maximum-accuracy
generators can lead to underrepresentation of minority groups. We
then introduce a new fairness definition, proportional representation,
and compare it to existing approaches.
Speaker: Eric Price is an associate professor in the Department of Computer
Science at UT Austin, where he studies how algorithms can produce more
accurate results with less data.
Presented by the Institute for Foundations of Machine Learning and Good Systems. Learn more and register.
Event Details
Date and Time
Oct. 11, 2021, 2:01 to 3:01 p.m.