A post-processing algorithm for fair classification applied to predictors of the form Pr(Y|X)
and Pr(A|X)
, or Pr(A,Y|X)
, depending on the fairness criterion. Supports (multi-class) statistical parity, equal opportunity, and equalized odds, under attribute aware or attribute blind settings.
See example.ipynb
for a quick tutorial. To reproduce our results:
- (arXiv 2024 preprint). See the notebooks
adult.ipynb
,compas.ipynb
,acsincome2.ipynb
,acsincome5.ipynb
, andbiasbios.ipynb
. - (ICML 2023). Archived under the
icml.23
tag; the new version generalizes the old algorithm for attribute-aware statistical parity.
LP solvers. Our algorithm involves solving linear programs, and they are set up in our code using the cvxpy
package. For large-scale problems, we recommend the Gurobi optimizer for speed.
@misc{xian2024UnifiedPostProcessing,
title = {{A Unified Post-Processing Framework for Group Fairness}},
author = {Xian, Ruicheng and Zhao, Han},
year = {2024},
archiveprefix = {arXiv},
eprint = {2405.04025},
primaryclass = {cs.LG}
}
@inproceedings{xian2023FairOptimalClassification,
title = {{Fair and Optimal Classification via Post-Processing}},
booktitle = {{Proceedings of the 40th International Conference on Machine Learning}},
author = {Xian, Ruicheng and Yin, Lang and Zhao, Han},
year = {2023}
}