作者
Ulrich Aıvodji, Julien Ferry, Sébastien Gambs, Marie-José Huguet, Mohamed Siala
发表日期
2019
期刊
arXiv preprint arXiv:1909.03977
简介
As the use of black-box models becomes ubiquitous in high stake decision-making systems, demands for fair and interpretable models are increasing. While it has been shown that interpretable models can be as accurate as black-box models in several critical domains, existing fair classification techniques that are interpretable by design often display poor accuracy/fairness tradeoffs in comparison with their non-interpretable counterparts. In this paper, we propose FairCORELS, a fair classification technique interpretable by design, whose objective is to learn fair rule lists. Our solution is a multi-objective variant of CORELS, a branch-and-bound algorithm to learn rule lists, that supports several statistical notions of fairness. Examples of such measures include statistical parity, equal opportunity and equalized odds. The empirical evaluation of FairCORELS on real-world datasets demonstrates that it outperforms state-of-the-art fair classification techniques that are interpretable by design while being competitive with non-interpretable ones.
引用总数
20202021202220232343
学术搜索中的文章
U Aïvodji, J Ferry, S Gambs, MJ Huguet, M Siala - arXiv preprint arXiv:1909.03977, 2019
U Aıvodji, J Ferry, S Gambs, MJ Huguet, M Siala - arXiv preprint arXiv:1909.03977, 2019