Heterogeneous information network (HIN) has been widely used to characterize entities of various types and their complex relations. Recent attempts either rely on explicit path reachability to leverage path-based semantic relatedness or graph neighborhood to learn heterogeneous network representations before predictions. These weakly coupled manners overlook the rich interactions among neighbor nodes, which introduces an early summarization issue. In this paper, we propose GraphHINGE (Heterogeneous INteract and aggreGatE), which captures and aggregates the interactive patterns between each pair of nodes through their structured neighborhoods. Specifically, we first introduce Neighborhood-based Interaction (NI) module to model the interactive patterns under the same metapaths, and then extend it to Cross Neighborhood-based Interaction (CNI) module to deal with different metapaths. Next, in order to address the complexity issue on large-scale networks, we formulate the interaction modules via a convolutional framework and learn the parameters efficiently with fast Fourier transform. Furthermore, we design a novel neighborhood-based selection (NS) mechanism, a sampling strategy, to filter high-order neighborhood information based on their low-order performance. The extensive experiments on six different types of heterogeneous graphs demonstrate the performance gains by comparing with state-of-the-arts in both click-through rate prediction and top-N recommendation tasks.
翻译:不同种类的信息网络(HIN)被广泛用于描述不同类型实体及其复杂关系的特征。最近的一些尝试要么依靠明确的路径可达性来利用基于路径的语义关联性或图形邻居来利用基于路径的语义关联性或图形邻居来在预测之前学习不同网络的演示。这些薄弱的结合方式忽略了相邻节点之间的丰富互动,从而引入了早期总结问题。在本文中,我们提议了“GapHINGE”(遗传和基因GatE),通过一个革命框架来捕捉和综合每个节点通过结构化邻居的交互模式。我们首先引入了基于邻居的互动模块(NS)来模拟同一模式下的交互式模式,然后将其扩展至跨近邻网络互动模块,以便应对不同模式。接下来,为了解决大型网络的复杂问题,我们通过一个革命框架来制定互动模块,并随着快速的Fourier变换而有效地学习参数。此外,我们设计了一个基于邻居的新型选择(NS)机制,一个基于取样的“互动互动”模块模块模块模块模块模块模块,在相同的模式下,通过测试六级高层次的图像测试,以测试测试了其高度业绩水平,以测试工具展示了不同的区域业绩。