Post-processing for Individual Fairness
Abstract
Post-processing in algorithmic fairness is a versatile approach for correcting bias in ML systems that are already used in production. The main appeal of post-processing is that it avoids expensive retraining. In this work, we propose general post-processing algorithms for individual fairness (IF). We consider a setting where the learner only has access to the predictions of the original model and a similarity graph between individuals, guiding the desired fairness constraints. We cast the IF post-processing problem as a graph smoothing problem corresponding to graph Laplacian regularization that preserves the desired "treat similar individuals similarly" interpretation. Our theoretical results demonstrate the connection of the new objective function to a local relaxation of the original individual fairness. Empirically, our post-processing algorithms correct individual biases in large-scale NLP models such as BERT, while preserving accuracy.
Cite
@article{arxiv.2110.13796,
title = {Post-processing for Individual Fairness},
author = {Felix Petersen and Debarghya Mukherjee and Yuekai Sun and Mikhail Yurochkin},
journal= {arXiv preprint arXiv:2110.13796},
year = {2021}
}
Comments
Published at NeurIPS 2021, Code @ https://github.com/Felix-Petersen/fairness-post-processing, Video @ https://www.youtube.com/watch?v=9PyKODDewPA