Discovering Localized Information for Heterogeneous Graph Node Representation Learning

Lin Meng, Ning Yan, Masood S. Mortazavi, Jiawei Zhang
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Abstract

Representation learning for heterogeneous graphs aims at learning meaningful node (or edge) representations to facilitate downstream tasks such as node classification, node clustering, and link prediction. While graph neural networks (GNNs) have recently proven to be effective in representation learning, one of the limitations is that most investigations focus on homogeneous graphs. Existing investigations on heterogeneous graphs often make direct use of meta-path type structures. Meta-path-based approaches often require a priori designation of meta-paths based on heuristic foreknowledge regarding the characteristics of heterogeneous graphs under investigation. In this paper, we propose a model without any a priori selection of meta-paths. We utilize locally-sampled (heterogeneous) context graphs “centered” at a target node in order to extract relevant representational information for that target node. To deal with the heterogeneity in the graph, given the different types of nodes, we use different linear transformations to map the features in different domains into a unified feature space. We use the classical Graph Convolution Network (GCN) model as a tool to aggregate node features and then aggregate the context graph feature vectors to produce the target node's feature representation. We evaluate our model on three real-world datasets. The results show that the proposed model has better performance when compared with four baseline models.
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异构图节点表示学习中的局部信息发现
异构图的表示学习旨在学习有意义的节点(或边缘)表示,以促进下游任务,如节点分类、节点聚类和链接预测。虽然图神经网络(gnn)最近被证明在表示学习中是有效的,但其局限性之一是大多数研究都集中在同质图上。对异构图的现有研究通常直接使用元路径类型结构。基于元路径的方法通常需要先验地指定元路径,这是基于对正在研究的异构图的特征的启发式预知。在本文中,我们提出了一个没有任何先验选择元路径的模型。我们利用以目标节点为中心的本地采样(异构)上下文图来提取该目标节点的相关表示信息。为了处理图的异构性,给定不同类型的节点,我们使用不同的线性变换将不同域的特征映射到统一的特征空间中。我们使用经典的图卷积网络(GCN)模型作为工具来聚合节点特征,然后聚合上下文图特征向量来生成目标节点的特征表示。我们在三个真实世界的数据集上评估我们的模型。结果表明,与四种基线模型相比,该模型具有更好的性能。
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