Node representation learning has demonstrated its effectiveness for various applications on graphs. Particularly, recent developments in contrastive learning have led to promising results in unsupervised node representation learning for a number of tasks. Despite the success of graph contrastive learning and consequent growing interest, fairness is largely under-explored in the field. To this end, this study addresses fairness issues in graph contrastive learning with fairness-aware graph augmentation designs, through adaptive feature masking and edge deletion. In the study, different fairness notions on graphs are introduced, which serve as guidelines for the proposed graph augmentations. Furthermore, theoretical analysis is provided to quantitatively prove that the proposed feature masking approach can reduce intrinsic bias. Experimental results on real social networks are presented to demonstrate that the proposed augmentations can enhance fairness in terms of statistical parity and equal opportunity, while providing comparable classification accuracy to state-of-the-art contrastive methods for node classification.
翻译:特别是,最近对比式学习的发展在未监督的节点代表学习中为一些任务带来了令人乐观的结果。尽管图表对比性学习取得了成功,因此引起越来越多的兴趣,但该领域的公平性在很大程度上没有得到充分探讨。为此,本研究报告通过适应性特征遮掩和边缘删除,以图表对比性学习与公平性认知图形增强设计解决了公平性问题。研究报告引入了不同的图表公平性概念,作为拟议图表增强的指南。此外,提供了理论分析,从数量上证明拟议的特征掩蔽方法可以减少内在的偏差。在真实社会网络上提供的实验结果表明,拟议的扩大可以提高统计均等和平等机会方面的公平性,同时提供与节点分类方面最新对比方法的可比分类准确性。