Ensuring that a predictor is not biased against a sensible feature is the key of Fairness learning. Conversely, Global Sensitivity Analysis is used in numerous contexts to monitor the influence of any feature on an output variable. We reconcile these two domains by showing how Fairness can be seen as a special framework of Global Sensitivity Analysis and how various usual indicators are common between these two fields. We also present new Global Sensitivity Analysis indices, as well as rates of convergence, that are useful as fairness proxies.
@article{arxiv.2103.04613,
title = {Fairness seen as Global Sensitivity Analysis},
author = {Clément Bénesse and Fabrice Gamboa and Jean-Michel Loubes and Thibaut Boissin},
journal= {arXiv preprint arXiv:2103.04613},
year = {2021}
}