Preserving node similarity adversarial learning graph representation with graph neural network

Shangying Yang, Yinglong Zhang, Jiawei E, Xuewen Xia, Xing Xu
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Abstract

In recent years, graph neural networks (GNNs) have showcased a strong ability to learn graph representations and have been widely used in various practical applications. However, many currently proposed GNN‐based representation learning methods do not retain neighbor‐based node similarity well, and this structural information is crucial in many cases. To address this issue, drawing inspiration from generative adversarial networks (GANs), we propose PNS‐AGNN (i.e., Preserving Node Similarity Adversarial Graph Neural Networks), a novel framework for acquiring graph representations, which can preserve neighbor‐based node similarity of the original graph and efficiently extract the nonlinear structural features of the graph. Specifically, we propose a new positive sample allocation strategy based on a node similarity index, where the generator can generate vector representations that satisfy node similarity through adversarial training. In addition, we also adopt an improved GNN as the discriminator, which utilizes the original graph structure for recursive neighborhood aggregation to maintain the local structure and feature information of nodes, thereby enhancing the graph representation's ability. Finally, we experimentally demonstrate that PNS‐AGNN significantly improves various tasks, including link prediction, node classification, and visualization.
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利用图神经网络保存节点相似性对抗学习图表示法
近年来,图神经网络(GNN)展示了强大的图表示学习能力,并被广泛应用于各种实际应用中。然而,目前提出的许多基于 GNN 的表示学习方法并不能很好地保留基于邻居的节点相似性,而这种结构信息在很多情况下是至关重要的。为了解决这个问题,我们从生成对抗网络(GANs)中汲取灵感,提出了 PNS-AGNN(即:Preserving Node Similarity Adversarial Graph Neural Networks,保留节点相似性对抗图神经网络),这是一种获取图表示的新型框架,它可以保留原始图基于邻居节点的相似性,并有效地提取图的非线性结构特征。具体来说,我们提出了一种基于节点相似性指数的新的正样本分配策略,生成器可以通过对抗训练生成满足节点相似性的向量表示。此外,我们还采用了改进的 GNN 作为判别器,利用原始图结构进行递归邻域聚合,以保持节点的局部结构和特征信息,从而增强图的表示能力。最后,我们通过实验证明,PNS-AGNN 能显著改善各种任务,包括链接预测、节点分类和可视化。
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