通过图增强促进链接预测的公平性

IF 2.4 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Frontiers in Big Data Pub Date : 2024-10-24 eCollection Date: 2024-01-01 DOI:10.3389/fdata.2024.1489306
Yezi Liu, Hanning Chen, Mohsen Imani
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引用次数: 0

摘要

链接预测是网络分析中的一项重要任务,但事实证明它很容易出现预测偏差,尤其是当来自不同敏感组的节点之间的链接被不公平地预测时。本文研究了公平链接预测问题,旨在确保预测的链接概率与所连接节点的敏感属性无关。现有方法通常会在图嵌入中采用去杂技术来缓解这一问题。然而,在现实世界的大型图上进行训练本来就具有挑战性,如果再加上公平性约束,就会使这一过程更加复杂。为了克服这一挑战,我们提出了 FairLink,这是一种学习公平性增强图的方法,可以在链接预测器的训练过程中绕过去毛刺的需要。FairLink 通过确保增强图遵循与原始输入图相似的训练轨迹来保持链接预测的准确性。同时,它通过最小化同一敏感组内节点对之间以及不同敏感组内节点对之间链接概率的绝对差异来提高公平性。我们在多个大规模图上进行的大量实验表明,FairLink 不仅提高了公平性,而且通常还能达到与基准方法相当的链接预测精度。最重要的是,增强型图在不同的 GNN 架构中表现出很强的通用性。FairLink 具有很强的可扩展性,因此适合部署在现实世界的大规模图中,在这种图中,保持公平性和准确性至关重要。
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Promoting fairness in link prediction with graph enhancement.

Link prediction is a crucial task in network analysis, but it has been shown to be prone to biased predictions, particularly when links are unfairly predicted between nodes from different sensitive groups. In this paper, we study the fair link prediction problem, which aims to ensure that the predicted link probability is independent of the sensitive attributes of the connected nodes. Existing methods typically incorporate debiasing techniques within graph embeddings to mitigate this issue. However, training on large real-world graphs is already challenging, and adding fairness constraints can further complicate the process. To overcome this challenge, we propose FairLink, a method that learns a fairness-enhanced graph to bypass the need for debiasing during the link predictor's training. FairLink maintains link prediction accuracy by ensuring that the enhanced graph follows a training trajectory similar to that of the original input graph. Meanwhile, it enhances fairness by minimizing the absolute difference in link probabilities between node pairs within the same sensitive group and those between node pairs from different sensitive groups. Our extensive experiments on multiple large-scale graphs demonstrate that FairLink not only promotes fairness but also often achieves link prediction accuracy comparable to baseline methods. Most importantly, the enhanced graph exhibits strong generalizability across different GNN architectures. FairLink is highly scalable, making it suitable for deployment in real-world large-scale graphs, where maintaining both fairness and accuracy is critical.

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来源期刊
CiteScore
5.20
自引率
3.20%
发文量
122
审稿时长
13 weeks
期刊最新文献
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