We study the fair regression problem under the notion of Mean Parity (MP) fairness, which requires the conditional mean of the learned function output to be constant with respect to the sensitive attributes. We address this problem by leveraging reproducing kernel Hilbert space (RKHS) to construct the functional space whose members are guaranteed to satisfy the fairness constraints. The proposed functional space suggests a closed-form solution for the fair regression problem that is naturally compatible with multiple sensitive attributes. Furthermore, by formulating the fairness-accuracy tradeoff as a relaxed fair regression problem, we derive a corresponding regression function that can be implemented efficiently and provides interpretable tradeoffs. More importantly, under some mild assumptions, the proposed method can be applied to regression problems with a covariance-based notion of fairness. Experimental results on benchmark datasets show the proposed methods achieve competitive and even superior performance compared with several state-of-the-art methods.
翻译:我们根据 " 平均对等 " (MP)公平概念研究公平回归问题,这一概念要求学习的函数输出的有条件值在敏感属性方面保持不变。我们通过利用复制核心Hilbert空间(RKHS)来解决这一问题,以构建其成员有保证满足公平制约的功能空间。拟议的功能空间建议了公平回归问题的封闭形式解决方案,它自然与多个敏感属性相容。此外,通过将公平对等权衡作为宽松公平公平回归问题,我们得出了相应的回归功能,可以高效实施并提供可解释的权衡。 更重要的是,根据一些温和的假设,拟议方法可以适用于基于共变公平概念的回归问题。基准数据集的实验结果显示,拟议方法与一些最先进的方法相比,具有竞争力甚至优异性。