FairWASP: Fast and Optimal Fair Wasserstein Pre-processing

Authors

  • Zikai Xiong Massachusetts Institute of Technology
  • Niccolò Dalmasso J.P. Morgan AI Research
  • Alan Mishler J.P. Morgan AI Research
  • Vamsi K. Potluru J.P. Morgan AI Research
  • Tucker Balch J.P. Morgan AI Research
  • Manuela Veloso J.P. Morgan AI Research

DOI:

https://doi.org/10.1609/aaai.v38i14.29545

Keywords:

ML: Optimization, CSO: Constraint Optimization, ML: Classification and Regression, ML: Ethics, Bias, and Fairness

Abstract

Recent years have seen a surge of machine learning approaches aimed at reducing disparities in model outputs across different subgroups. In many settings, training data may be used in multiple downstream applications by different users, which means it may be most effective to intervene on the training data itself. In this work, we present FairWASP, a novel pre-processing approach designed to reduce disparities in classification datasets without modifying the original data. FairWASP returns sample-level weights such that the reweighted dataset minimizes the Wasserstein distance to the original dataset while satisfying (an empirical version of) demographic parity, a popular fairness criterion. We show theoretically that integer weights are optimal, which means our method can be equivalently understood as duplicating or eliminating samples. FairWASP can therefore be used to construct datasets which can be fed into any classification method, not just methods which accept sample weights. Our work is based on reformulating the pre-processing task as a large-scale mixed-integer program (MIP), for which we propose a highly efficient algorithm based on the cutting plane method. Experiments demonstrate that our proposed optimization algorithm significantly outperforms state-of-the-art commercial solvers in solving both the MIP and its linear program relaxation. Further experiments highlight the competitive performance of FairWASP in reducing disparities while preserving accuracy in downstream classification settings.

Published

2024-03-24

How to Cite

Xiong, Z., Dalmasso, N., Mishler, A., Potluru, V. K., Balch, T., & Veloso, M. (2024). FairWASP: Fast and Optimal Fair Wasserstein Pre-processing. Proceedings of the AAAI Conference on Artificial Intelligence, 38(14), 16120-16128. https://doi.org/10.1609/aaai.v38i14.29545

Issue

Section

AAAI Technical Track on Machine Learning V