Poster
AnonFair: A Flexible Toolkit for Algorithmic Fairness
Eoin Delaney · Zihao Fu · Chris Russell
West Ballroom A-D #5502
We present AnonFair, a new open source toolkit for enforcing algorithmic fairness. Compared to existing toolkits: (i) We support NLP and Computer Vision classification as well as standard tabular problems. (ii) We support enforcing fairness on validation data, making us robust to a wide-range of overfitting challenges. (iii) Our approach can optimize any measure that is a function of True Positives, False Positive, False Negatives, and True Negatives. This makes it easily extendable, and much more expressive than existing toolkits. It supports 9/9 and 10/10 of the group metrics of two popular review papers. AnonFair is compatible with standard ML toolkits including sklearn, Autogluon and pytorch and is freely available online.
Live content is unavailable. Log in and register to view live content