论文标题

最佳运输的所有公平性预测

All of the Fairness for Edge Prediction with Optimal Transport

论文作者

Laclau, Charlotte, Redko, Ievgen, Choudhary, Manvi, Largeron, Christine

论文摘要

最近,越来越多地使用了机器学习和数据挖掘算法,以支持许多社会重要性(例如医疗保健,教育或安全)的决策系统。尽管其预测能力非常有效,但部署的算法有时倾向于学习一个归纳模型,因为后者在学习样本中存在后者,因此具有歧视性偏见。这个问题引起了一个新的算法公平领域,目的是纠正某个属性引入的歧视性偏差,以使其从模型的输出中解散。在本文中,我们研究了图表中边缘预测任务的公平性问题,与更受欢迎的公平分类环境相比,在图形中的边缘预测任务基本不足。为此,我们提出了公平边缘预测的问题,理论上分析它,并为任意图的邻接矩阵提出了一个嵌入式敏锐的修复程序,并在集团和个人公平之间进行权衡。我们通过实验表明我们的方法的多功能性及其对公平和预测准确性不同概念的明确控制的能力。

Machine learning and data mining algorithms have been increasingly used recently to support decision-making systems in many areas of high societal importance such as healthcare, education, or security. While being very efficient in their predictive abilities, the deployed algorithms sometimes tend to learn an inductive model with a discriminative bias due to the presence of this latter in the learning sample. This problem gave rise to a new field of algorithmic fairness where the goal is to correct the discriminative bias introduced by a certain attribute in order to decorrelate it from the model's output. In this paper, we study the problem of fairness for the task of edge prediction in graphs, a largely underinvestigated scenario compared to a more popular setting of fair classification. To this end, we formulate the problem of fair edge prediction, analyze it theoretically, and propose an embedding-agnostic repairing procedure for the adjacency matrix of an arbitrary graph with a trade-off between the group and individual fairness. We experimentally show the versatility of our approach and its capacity to provide explicit control over different notions of fairness and prediction accuracy.

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