Fairness has been taken as a critical metric in machine learning models, which is considered as an important component of trustworthy machine learning. In this paper, we focus on obtaining fairness for popular link prediction tasks, which are measured by dyadic fairness. A novel pre-processing methodology is proposed to establish dyadic fairness through data repairing based on optimal transport theory. With the well-established theoretical connection between the dyadic fairness for graph link prediction and a conditional distribution alignment problem, the dyadic repairing scheme can be equivalently transformed into a conditional distribution alignment problem. Furthermore, an optimal transport-based dyadic fairness algorithm called DyadicOT is obtained by efficiently solving the alignment problem, satisfying flexibility and unambiguity requirements. The proposed DyadicOT algorithm shows superior results in obtaining fairness compared to other fairness methods on two benchmark graph datasets.
翻译:在机器学习模型中,公平被视为一个关键的衡量标准,被认为是可信赖的机器学习的重要组成部分。在本文中,我们侧重于为大众联系预测任务取得公平性,以dyadic公平度为衡量标准。建议采用一种新的预处理方法,通过基于最佳运输理论的数据修复建立dyadic公平性。由于在图形联系预测的dyadic公平性与有条件的分布协调问题之间建立了牢固的理论联系,dyadic修补计划可以等同地转化为有条件的分布协调问题。此外,通过高效解决校准问题、满足灵活性和不矛盾的要求,获得了一个称为Dyadicot的基于运输的公平性最佳算法。提议的Dyadicot算法显示,与两个基准图表数据集中的其他公平方法相比,在取得公平性方面取得了优异的结果。