论文标题
Gahne:图形聚集的异质网络嵌入
GAHNE: Graph-Aggregated Heterogeneous Network Embedding
论文作者
论文摘要
现实世界的网络通常由不同类型的节点和边缘组成,具有丰富的语义,被广泛称为异质信息网络(HIN)。异质网络嵌入旨在将节点嵌入到低维矢量中,从而捕获异质网络的丰富固有信息。但是,现有模型要么取决于手动设计元路径,忽略不同语义之间的相互影响,要么忽略了全球网络中信息的某些方面。为了解决这些局限性,我们提出了一种新型的图形聚集的异质网络嵌入(Gahne),该网络嵌入(Gahne)旨在尽可能全面地提取HINS的语义,以改善基于图形卷积神经网络的下游任务的结果。在Gahne模型中,我们开发了几种机制,可以从不同的单类型子网络中汇总语义表示,并将全局信息融合到最终嵌入中。在三个现实世界HIN数据集上进行的广泛实验表明,我们所提出的模型始终胜过现有的最新方法。
The real-world networks often compose of different types of nodes and edges with rich semantics, widely known as heterogeneous information network (HIN). Heterogeneous network embedding aims to embed nodes into low-dimensional vectors which capture rich intrinsic information of heterogeneous networks. However, existing models either depend on manually designing meta-paths, ignore mutual effects between different semantics, or omit some aspects of information from global networks. To address these limitations, we propose a novel Graph-Aggregated Heterogeneous Network Embedding (GAHNE), which is designed to extract the semantics of HINs as comprehensively as possible to improve the results of downstream tasks based on graph convolutional neural networks. In GAHNE model, we develop several mechanisms that can aggregate semantic representations from different single-type sub-networks as well as fuse the global information into final embeddings. Extensive experiments on three real-world HIN datasets show that our proposed model consistently outperforms the existing state-of-the-art methods.