Unsupervised graph representation learning (UGRL) has drawn increasing research attention and achieved promising results in several graph analytic tasks. Relying on the homophily assumption, existing UGRL methods tend to smooth the learned node representations along all edges, ignoring the existence of heterophilic edges that connect nodes with distinct attributes. As a result, current methods are hard to generalize to heterophilic graphs where dissimilar nodes are widely connected, and also vulnerable to adversarial attacks. To address this issue, we propose a novel unsupervised Graph Representation learning method with Edge hEterophily discriminaTing (GREET) which learns representations by discriminating and leveraging homophilic edges and heterophilic edges. To distinguish two types of edges, we build an edge discriminator that infers edge homophily/heterophily from feature and structure information. We train the edge discriminator in an unsupervised way through minimizing the crafted pivot-anchored ranking loss, with randomly sampled node pairs acting as pivots. Node representations are learned through contrasting the dual-channel encodings obtained from the discriminated homophilic and heterophilic edges. With an effective interplaying scheme, edge discriminating and representation learning can mutually boost each other during the training phase. We conducted extensive experiments on 14 benchmark datasets and multiple learning scenarios to demonstrate the superiority of GREET.
翻译:未经监督的图形代表性学习(UGRL)吸引了越来越多的研究关注,在一些图形分析任务中取得了令人乐观的成果。基于同质假设,现有的 UGRL方法倾向于在所有边缘平滑学习的节点表达,忽视了将不同特征的节点连接在一起的异异异点的异异点化图(UGRL)的存在。因此,目前的方法很难概括为不同节点广泛连接、也易受对抗性攻击的异点化图。为了解决这一问题,我们提出了一种新型的未经监督的图表代表学习方法,该方法通过歧视和利用同性恋边缘和异异性嗜好边缘来了解所学的节点表达。为了区分两种边缘,我们建立了一种边缘歧视,将异点/异点与特征和结构信息相交错。我们通过尽量减少精心设计的分错位排序损失,我们通过随机抽样的节点对齐组合,通过相互影响性化的相互对等化的模型来学习。我们通过相互偏向的相互偏向的双向的演示,通过相互偏向的相互对比的学习过程来演示,我们从相互偏向的双向的双向的模拟学习,我们从从从学习中学习中学习中学习的双向的双向进进进进进进进进进进进进进进进进进进进进进进进进进进进进进进进进进进进进进进进进进进进进进进制。