Learning Non-Discriminatory Predictors
Machine Learning
2017-11-03 v3
Abstract
We consider learning a predictor which is non-discriminatory with respect to a "protected attribute" according to the notion of "equalized odds" proposed by Hardt et al. [2016]. We study the problem of learning such a non-discriminatory predictor from a finite training set, both statistically and computationally. We show that a post-hoc correction approach, as suggested by Hardt et al, can be highly suboptimal, present a nearly-optimal statistical procedure, argue that the associated computational problem is intractable, and suggest a second moment relaxation of the non-discrimination definition for which learning is tractable.
Cite
@article{arxiv.1702.06081,
title = {Learning Non-Discriminatory Predictors},
author = {Blake Woodworth and Suriya Gunasekar and Mesrob I. Ohannessian and Nathan Srebro},
journal= {arXiv preprint arXiv:1702.06081},
year = {2017}
}
Comments
28 pages