To alleviate data sparsity and cold-start problems of traditional recommender systems (RSs), incorporating knowledge graphs (KGs) to supplement auxiliary information has attracted considerable attention recently. However, simply integrating KGs in current KG-based RS models is not necessarily a guarantee to improve the recommendation performance, which may even weaken the holistic model capability. This is because the construction of these KGs is independent of the collection of historical user-item interactions; hence, information in these KGs may not always be helpful for recommendation to all users. In this paper, we propose attentive Knowledge-aware Graph convolutional networks with Collaborative Guidance for personalized Recommendation (CG-KGR). CG-KGR is a novel knowledge-aware recommendation model that enables ample and coherent learning of KGs and user-item interactions, via our proposed Collaborative Guidance Mechanism. Specifically, CG-KGR first encapsulates historical interactions to interactive information summarization. Then CG-KGR utilizes it as guidance to extract information out of KGs, which eventually provides more precise personalized recommendation. We conduct extensive experiments on four real-world datasets over two recommendation tasks, i.e., Top-K recommendation and Click-Through rate (CTR) prediction. The experimental results show that the CG-KGR model significantly outperforms recent state-of-the-art models by 4.0-53.2% and 0.4-3.2%, in terms of Recall metric on Top-K recommendation and AUC on CTR prediction, respectively.
翻译:为了减轻传统建议系统(RSs)的数据广度和冷启动问题,将知识图表(KGs)纳入知识图表(KGs)以补充辅助信息,最近引起了相当多的关注。然而,仅仅将KGs纳入目前基于KG的RS模型并不一定能保证改进建议性能,这甚至会削弱整体模型能力。这是因为这些KGs的构建独立于历史用户-项目互动的收集;因此,这些KGs中的信息不一定总能有助于向所有用户提出建议。在本文件中,我们提出了与个人化建议协作指南(CG-KGR)的专注知识觉图变图变网络。CGGGG是一个新的知识觉变建议模式,通过我们拟议的合作指导机制,使KGs和用户项目互动能够充分、连贯地学习。具体地说,CGGG首先概括历史互动,然后CGG-K模型作为指南,从Ks中提取信息,最终提供更精确的个人化建议。我们在四个现实-TR-TR-Ral-Rex Stateal-Gs Streal-al-C建议中进行广泛的实验性实验性实验性试验,分别显示C-C-ral-ral-ral-C建议。