Discipline of Business Analytics, The University of Sydney Business School, The University of Sydney, NSW 2006, Australia; Institute of Natural Sciences and School of Mathematical Sciences, Shanghai Jiao Tong University, Shanghai 200240, China.
Discipline of Business Analytics, The University of Sydney Business School, The University of Sydney, NSW 2006, Australia.
Neural Netw. 2022 Aug;152:322-331. doi: 10.1016/j.neunet.2022.05.001. Epub 2022 May 10.
Learning efficient graph representation is the key to favorably addressing downstream tasks on graphs, such as node or graph property prediction. Given the non-Euclidean structural property of graphs, preserving the original graph data's similarity relationship in the embedded space needs specific tools and a similarity metric. This paper develops a new graph representation learning scheme, namely Egg, which embeds approximated second-order graph characteristics into a Grassmann manifold. The proposed strategy leverages graph convolutions to learn hidden representations of the corresponding subspace of the graph, which is then mapped to a Grassmann point of a low dimensional manifold through truncated singular value decomposition (SVD). The established graph embedding approximates denoised correlationship of node attributes, as implemented in the form of a symmetric matrix space for Euclidean calculation. The effectiveness of Egg is demonstrated using both clustering and classification tasks at the node level and graph level. It outperforms baseline models on various benchmarks.
学习高效的图表示是在图上进行下游任务(如节点或图属性预测)的关键。考虑到图的非欧几里得结构性质,在嵌入空间中保留原始图数据的相似性关系需要特定的工具和相似性度量。本文提出了一种新的图表示学习方案,即 Egg,它将近似的二阶图特征嵌入 Grassmann 流形中。所提出的策略利用图卷积来学习图对应子空间的隐藏表示,然后通过截断奇异值分解(SVD)将其映射到低维流形上的 Grassmann 点。建立的图嵌入近似于节点属性的去噪相关关系,以对称矩阵空间的形式实现,以便进行欧几里得计算。Egg 的有效性在节点级和图级的聚类和分类任务中得到了验证。它在各种基准上优于基线模型。