Impossibility results show that important fairness measures (independence, separation, sufficiency) cannot be satisfied at the same time under reasonable assumptions. This paper explores whether we can satisfy and/or improve these fairness measures simultaneously to a certain degree. We introduce information-theoretic formulations of the fairness measures and define degrees of fairness based on these formulations. The information-theoretic formulations suggest unexplored theoretical relations between the three fairness measures. In the experimental part, we use the information-theoretic expressions as regularizers to obtain fairness-regularized predictors for three standard datasets. Our experiments show that a) fairness regularization directly increases fairness measures, in line with existing work, and b) some fairness regularizations indirectly increase other fairness measures, as suggested by our theoretical findings. This establishes that it is possible to increase the degree to which some fairness measures are satisfied at the same time -- some fairness measures are gradually compatible.
翻译:绝对性结果显示,在合理的假设下,重要的公平措施(独立、分离、充分性)不能同时得到满足。本文件探讨我们是否能够同时满足和(或)在一定程度上改善这些公平措施。我们采用公平措施的信息理论公式,并根据这些公式界定公平程度。信息理论公式表明三种公平措施之间没有探讨理论关系。在实验部分,我们以信息理论表达方式为规范者,为三个标准数据集获取公平、正规化的预测器。我们的实验表明,a) 公平规范化直接增加公平措施,与现有工作一致;b) 一些公平规范化间接增加了其他公平措施,正如我们的理论结论所建议的那样。这证明,有可能提高一些公平措施在同一时间达到的满意度。一些公平措施是逐渐相容的。