Mitigating Degree Bias in Graph Representation Learning With Learnable Structural Augmentation and Structural Self-Attention

IF 7.9 2区 计算机科学 Q1 ENGINEERING, MULTIDISCIPLINARY
Van Thuy Hoang;Hyeon-Ju Jeon;O-Joun Lee
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Abstract

Graph Neural Networks (GNNs) update node representations through message passing, which is primarily based on the homophily principle, assuming that adjacent nodes share similar features. However, in real-world graphs with long-tailed degree distributions, high-degree nodes dominate message passing, causing a degree bias where low-degree nodes remain under-represented due to inadequate messages. The main challenge in addressing degree bias is how to discover non-adjacent nodes to provide additional messages to low-degree nodes while reducing excessive messages for high-degree nodes. Nevertheless, exploiting non-adjacent nodes to provide valuable messages is challenging, as it could generate noisy information and disrupt the original graph structures. To solve it, we propose a novel Degree Fairness Graph Transformer, named DegFairGT, to mitigate degree bias by discovering structural similarities between non-adjacent nodes through learnable structural augmentation and structural self-attention. Our key idea is to exploit non-adjacent nodes with similar roles in the same community to generate informative edges under our augmentation, which could provide informative messages between nodes with similar roles while ensuring that the homophily principle is maintained within the community. By considering the structural similarities among non-adjacent nodes to generate informative edges, DegFairGT can overcome the imbalanced messages while still preserving the graph structures. To enable DegFairGT to learn such structural similarities, we then propose a structural self-attention to capture the similarities between node pairs. To preserve global graph structures and prevent graph augmentation from hindering graph structure, we propose a Self-Supervised Learning task to preserve p-step transition probability and regularize graph augmentation. Extensive experiments on six datasets showed that DegFairGT outperformed state-of-the-art baselines in degree fairness analysis, node classification, and node clustering tasks.
利用可学结构增强和结构自注意缓解图表示学习中的程度偏差
图神经网络(gnn)通过消息传递更新节点表示,这主要基于同质性原则,假设相邻节点具有相似的特征。然而,在具有长尾度分布的真实图中,高度节点主导消息传递,导致度偏差,其中低度节点由于消息不足而仍然未被充分代表。解决度偏差的主要挑战是如何发现非相邻节点,为低度节点提供额外的消息,同时减少高度节点的过多消息。然而,利用非相邻节点来提供有价值的消息是具有挑战性的,因为它可能产生噪声信息并破坏原始图结构。为了解决这个问题,我们提出了一种新的度公平图转换器(DegFairGT),通过可学习的结构增强和结构自注意来发现非相邻节点之间的结构相似性,从而减轻度偏差。我们的关键思想是利用同一社区中角色相似的非相邻节点生成信息边,在保证社区内同质性原则的前提下,在角色相似的节点之间提供信息消息。通过考虑非相邻节点之间的结构相似性来生成信息边,DegFairGT可以在保持图结构的同时克服不平衡消息。为了使DegFairGT能够学习这种结构相似性,我们提出了一种结构自关注来捕获节点对之间的相似性。为了保持图的全局结构和防止图的扩充阻碍图的结构,我们提出了一个自监督学习任务来保持p步转移概率和正则化图的扩充。在6个数据集上进行的大量实验表明,DegFairGT在程度公平分析、节点分类和节点聚类任务方面优于最先进的基线。
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来源期刊
IEEE Transactions on Network Science and Engineering
IEEE Transactions on Network Science and Engineering Engineering-Control and Systems Engineering
CiteScore
12.60
自引率
9.10%
发文量
393
期刊介绍: The proposed journal, called the IEEE Transactions on Network Science and Engineering (TNSE), is committed to timely publishing of peer-reviewed technical articles that deal with the theory and applications of network science and the interconnections among the elements in a system that form a network. In particular, the IEEE Transactions on Network Science and Engineering publishes articles on understanding, prediction, and control of structures and behaviors of networks at the fundamental level. The types of networks covered include physical or engineered networks, information networks, biological networks, semantic networks, economic networks, social networks, and ecological networks. Aimed at discovering common principles that govern network structures, network functionalities and behaviors of networks, the journal seeks articles on understanding, prediction, and control of structures and behaviors of networks. Another trans-disciplinary focus of the IEEE Transactions on Network Science and Engineering is the interactions between and co-evolution of different genres of networks.
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