Unsupervised graph representation learning has emerged as a powerful tool to address real-world problems and achieves huge success in the graph learning domain. Graph contrastive learning is one of the unsupervised graph representation learning methods, which recently attracts attention from researchers and has achieved state-of-the-art performances on various tasks. The key to the success of graph contrastive learning is to construct proper contrasting pairs to acquire the underlying structural semantics of the graph. However, this key part is not fully explored currently, most of the ways generating contrasting pairs focus on augmenting or perturbating graph structures to obtain different views of the input graph. But such strategies could degrade the performances via adding noise into the graph, which may narrow down the field of the applications of graph contrastive learning. In this paper, we propose a novel graph contrastive learning method, namely \textbf{D}ual \textbf{S}pace \textbf{G}raph \textbf{C}ontrastive (DSGC) Learning, to conduct graph contrastive learning among views generated in different spaces including the hyperbolic space and the Euclidean space. Since both spaces have their own advantages to represent graph data in the embedding spaces, we hope to utilize graph contrastive learning to bridge the spaces and leverage advantages from both sides. The comparison experiment results show that DSGC achieves competitive or better performances among all the datasets. In addition, we conduct extensive experiments to analyze the impact of different graph encoders on DSGC, giving insights about how to better leverage the advantages of contrastive learning between different spaces.
翻译:未经监督的图形代表学习已成为解决真实世界问题和在图形学习领域取得巨大成功的一个强大工具。图表对比学习是未经监督的图形代表学习方法之一,最近吸引了研究人员的注意,并在各种任务上取得了最先进的表现。图对比学习的成功关键在于构建适当的对比对以获得图中的基本结构语义。然而,目前尚未充分探索这一关键部分,产生对比对对的多数方法侧重于增加或干扰图形结构以获取对投入图形的不同观点。但这种战略可以通过在图形中添加噪音来降低业绩,这可能会缩小图形对比学习的应用领域。在本文件中,我们提出了一个新的图表对比学习方法,即: textbf{D} 和 textbf{S}pace\ textbfff{G}}Textbfffreather accessional abrealing lavel address, 使所有竞争性的对比对等式实验性平面学习如何进行对比分析,使不同空间的对等平面的对面的图像进行更好的对比学习。