Due to the development of graph neural networks, graph-based representation learning methods have made great progress in recommender systems. However, data sparsity is still a challenging problem that most graph-based recommendation methods are confronted with. Recent works try to address this problem by utilizing side information. In this paper, we exploit the relevant and easily accessible textual information by advanced natural language processing (NLP) models and propose a light RGCN-based (RGCN, relational graph convolutional network) collaborative filtering method based on heterogeneous graphs. Specifically, to incorporate rich textual knowledge, we utilize a pre-trained NLP model to initialize the embeddings of text nodes. Afterward, by performing a simplified RGCN-based node information propagation on the constructed heterogeneous graph, the embeddings of users and items can be adjusted with textual knowledge, which effectively alleviates the negative effects of data sparsity. Moreover, the matching function used by most graph-based representation learning methods is the inner product, which is not appropriate for the obtained embeddings that contain complex semantics. We design a predictive network that combines graph-based representation learning with neural matching function learning, and demonstrate that this architecture can bring a significant performance improvement. Extensive experiments are conducted on three publicly available datasets, and the results verify the superior performance of our method over several baselines.
翻译:由于开发了图形神经网络,基于图形的代表学习方法在建议系统方面取得了很大进展。然而,数据宽度仍然是大多数基于图形的建议方法所面临的一个具有挑战性的问题。最近的工作试图通过利用侧面信息解决这一问题。在本文件中,我们利用先进的自然语言处理(NLP)模型的相关和容易获得的文本信息,并提议基于数据宽度的光 RGCN(RGCN, 关联图形革命网络)合作过滤方法。具体地说,为了纳入丰富的文本知识,我们使用预先培训的NLP模型来启动文本节点的嵌入。之后,我们通过在构建的混合图上进行简化的基于 RGCN 的节点信息传播,用户和项目的嵌入可与文本知识一起调整,从而有效减轻数据宽度的消极影响。此外,大多数基于图表的演示方法所使用的匹配功能是内部产品,这不适合包含复杂语义的嵌入。我们设计了一个预测性网络,将基于RGCN的基于RGCN的节点信息传播信息,从而将基于现有三种高级的绩效测试方法的绩效与现有数据测试方法结合起来。我们在三种基于图表的模型的模型的模型上可以用来学习。