Improving Recommendation Fairness via Graph Structure and Representation Augmentation
Tongxin Xu, Wenqiang Liu, Chenzhong Bin, Cihan Xiao, Zhixin Zeng, Tianlong Gu

TL;DR
This paper proposes a dual data augmentation framework for fair recommendation systems using graph structures and representation learning, effectively reducing bias while maintaining utility.
Contribution
It introduces a novel data augmentation approach based on prior hypotheses to improve fairness in GCN-based recommendation models.
Findings
Outperforms existing fairness methods on real-world datasets.
Effectively reduces bias without sacrificing recommendation utility.
Demonstrates the effectiveness of dual augmentation strategies.
Abstract
Graph Convolutional Networks (GCNs) have become increasingly popular in recommendation systems. However, recent studies have shown that GCN-based models will cause sensitive information to disseminate widely in the graph structure, amplifying data bias and raising fairness concerns. While various fairness methods have been proposed, most of them neglect the impact of biased data on representation learning, which results in limited fairness improvement. Moreover, some studies have focused on constructing fair and balanced data distributions through data augmentation, but these methods significantly reduce utility due to disruption of user preferences. In this paper, we aim to design a fair recommendation method from the perspective of data augmentation to improve fairness while preserving recommendation utility. To achieve fairness-aware data augmentation with minimal disruption to user…
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