Graph Neural Networks (GNNs) have been successfully adopted in recommender systems by virtue of the message-passing that implicitly captures collaborative effect. Nevertheless, most of the existing message-passing mechanisms for recommendation are directly inherited from GNNs without scrutinizing whether the captured collaborative effect would benefit the prediction of user preferences. In this paper, we first analyze how message-passing captures the collaborative effect and propose a recommendation-oriented topological metric, Common Interacted Ratio (CIR), which measures the level of interaction between a specific neighbor of a node with the rest of its neighbors. After demonstrating the benefits of leveraging collaborations from neighbors with higher CIR, we propose a recommendation-tailored GNN, Collaboration-Aware Graph Convolutional Network (CAGCN), that goes beyond 1-Weisfeiler-Lehman(1-WL) test in distinguishing non-bipartite-subgraph-isomorphic graphs. Experiments on six benchmark datasets show that the best CAGCN variant outperforms the most representative GNN-based recommendation model, LightGCN, by nearly 10\% in Recall@20 and also achieves around 80\% speedup. Our code is publicly available at https://github.com/YuWVandy/CAGCN.
翻译:在建议系统里,通过暗含地捕捉协作效应的信息传递方式,成功地在建议系统中采用了神经网络(GNNS) ; 然而,大多数现有的信息传递机制都直接从GNNS直接继承建议机制,而没有仔细审查所捕捉的协作效应是否有利于用户偏好的预测。在本文中,我们首先分析信息传递如何捕捉到协作效应,并提议一个面向建议的地貌衡量标准,即共同互动比率(CIR),衡量一个节点与邻国其他邻国之间互动的程度。在展示了与较高级CIR的邻居进行杠杆协作的好处之后,我们提议了一个建议性更贴的GNNN、协作-Aware图像革命网络(CAGCN),该测试超出了1-Weisfeiler-Lehman(1-WLL)的测试,在区分非双向子线-线图时,我们首先分析了六种基准数据集的实验显示,最佳CAGCN变式比最有代表性的GNNNNN-CN建议模式、LightGNGNB/NVUP, 和我们的80/RAGNC速度也几乎在10_AGNAG/RAG上实现了。