Devising a fair classifier that does not discriminate against different groups is an important problem in machine learning. Although researchers have proposed various ways of defining group fairness, most of them only focused on the immediate fairness, ignoring the long-term impact of a fair classifier under the dynamic scenario where each individual can improve its feature over time. Such dynamic scenarios happen in real world, e.g., college admission and credit loaning, where each rejected sample makes effort to change its features to get accepted afterwards. In this dynamic setting, the long-term fairness should equalize the samples' feature distribution across different groups after the rejected samples make some effort to improve. In order to promote long-term fairness, we propose a new fairness notion called Equal Improvability (EI), which equalizes the potential acceptance rate of the rejected samples across different groups assuming a bounded level of effort will be spent by each rejected sample. We analyze the properties of EI and its connections with existing fairness notions. To find a classifier that satisfies the EI requirement, we propose and study three different approaches that solve EI-regularized optimization problems. Through experiments on both synthetic and real datasets, we demonstrate that the proposed EI-regularized algorithms encourage us to find a fair classifier in terms of EI. Finally, we provide experimental results on dynamic scenarios which highlight the advantages of our EI metric in achieving the long-term fairness. Codes are available in a GitHub repository, see https://github.com/guldoganozgur/ei_fairness.
翻译:设计一个不歧视不同群体的公平分类器是机器学习中的一个重要问题。虽然研究人员已经提出了确定群体公平性的各种方法,但大多数研究人员都建议了确定群体公平性的各种办法,其中多数只是强调立即公平,忽视了在动态情景下公平分类员的长期影响,在这种动态情景下,每个人可以随着时间的推移改善其特点。这种动态情景发生在现实世界中,例如,大学录取和信用借阅,每个被拒绝的样本都努力改变其特征,以便随后被接受。在这一动态环境中,长期公平应当使样本在被拒绝的样本后不同群体之间的特征分布平等化,并作出一些改进的努力。为了促进长期公平性,我们提出了一个新的公平性概念,称为“平等不易性”(EI),它等于每个被排斥的样本的潜在接受率,每个被排斥的样本都将花费在现实世界中。我们分析了EI的特性及其与现有公平性概念的联系。为了找到一个符合EI要求的分类,我们提出并研究三种不同的方法,解决EI-正规化的优化问题。通过在合成和真实性数据分析中进行试验,我们最后在模拟的E-alvialal i-alal ial ial 上展示我们发现一个我们现有的E-ralalalalal ialal 。我们可以找到一个Agal