Recently, graph neural networks have shown the superiority of modeling the complex topological structures in heterogeneous network-based recommender systems. Due to the diverse interactions among nodes and abundant semantics emerging from diverse types of nodes and edges, there is a bursting research interest in learning expressive node representations in multiplex heterogeneous networks. One of the most important tasks in recommender systems is to predict the potential connection between two nodes under a specific edge type (i.e., relationship). Although existing studies utilize explicit metapaths to aggregate neighbors, practically they only consider intra-relationship metapaths and thus fail to leverage the potential uplift by inter-relationship information. Moreover, it is not always straightforward to exploit inter-relationship metapaths comprehensively under diverse relationships, especially with the increasing number of node and edge types. In addition, contributions of different relationships between two nodes are difficult to measure. To address the challenges, we propose HybridGNN, an end-to-end GNN model with hybrid aggregation flows and hierarchical attentions to fully utilize the heterogeneity in the multiplex scenarios. Specifically, HybridGNN applies a randomized inter-relationship exploration module to exploit the multiplexity property among different relationships. Then, our model leverages hybrid aggregation flows under intra-relationship metapaths and randomized exploration to learn the rich semantics. To explore the importance of different aggregation flow and take advantage of the multiplexity property, we bring forward a novel hierarchical attention module which leverages both metapath-level attention and relationship-level attention. Extensive experimental results suggest that HybridGNN achieves the best performance compared to several state-of-the-art baselines.
翻译:最近,图表神经网络显示,在以网络为基础的不同建议系统中建模复杂的地形结构,其优劣之处在于模拟复杂的地形结构。由于各节点之间的相互作用和从不同类型节点和边缘产生的大量语义学,在多式混合网络中,对学习表达式节点表示的兴趣爆裂。建议系统的最重要任务之一是预测在特定边缘类型(即关系)下两个节点之间的潜在联系。虽然现有研究利用了与聚合邻国的明确的代谢方式,但实际上它们只考虑关系内部的代谢方式,从而无法利用各种类型节点和边缘之间信息的潜在提升。此外,在多种关系中,特别是在节点和边缘类型的网络中,全面利用相互关系的表达式节点。此外,建议系统的最重要任务之一是预测两个节点之间在特定边缘类型(即关系)下的潜在联系。为了应对挑战,我们建议GMIBNNNN,即终端至终端的GNNNM模型,一个带有混合集流流和分层关注点的GNNNM,以充分利用多式关系中位级关系中的异性关系,从而利用多式流关系中不同级关系提升潜力。具体化GGNNNNNNNNNT,在多个级关系中利用关系中的代位流关系中的关系,这是一个随机化的代号号号号的代号的代号的代谢流流,因此,而将一个随机的代号号号号号号,而使内级的代谢号的代号的代号的代号的代号的代谢式的代谢式的代号的代号号号号号号号号号号的代号号号号,而成为了我们号。