Knowledge graph (KG), as the side information, is widely utilized to learn the semantic representations of item/user for recommendation system. The traditional recommendation algorithms usually just depend on user-item interactions, but ignore the inherent web information describing the item/user, which could be formulated by the knowledge graph embedding (KGE) methods to significantly improve applications' performance. In this paper, we propose a knowledge-aware-based recommendation algorithm to capture the local and global representation learning from heterogeneous information. Specifically, the local model and global model can naturally depict the inner patterns in the content-based heterogeneous information and interactive behaviors among the users and items. Based on the method that local and global representations are learned jointly by graph convolutional networks with attention mechanism, the final recommendation probability is calculated by a fully-connected neural network. Extensive experiments are conducted on two real-world datasets to verify the proposed algorithm's validation. The evaluation results indicate that the proposed algorithm surpasses state-of-arts by $10.0\%$, $5.1\%$, $2.5\%$ and $1.8\%$ in metrics of MAE, RMSE, AUC and F1-score at least, respectively. The significant improvements reveal the capacity of our proposal to recommend user/item effectively.
翻译:作为侧面信息,知识图(KG)被广泛用于学习项目/用户在建议系统中的语义表达方式,传统建议算法通常仅取决于用户-项目互动,而忽视描述项目/用户的内在网络信息,这些信息可以通过知识图嵌入(KGE)方法制定,以大大改进应用程序的性能。在本文件中,我们提出了一个基于知识的基于知识的建议算法,以从各种信息中获取地方和全球代表性的学习。具体地说,当地模式和全球模式可以自然地描述基于内容的多样化信息和用户与项目之间互动行为的内部模式。根据本地和全球代表由带有注意机制的图象相联网络共同学习的方法,最后建议概率由一个完全相连的神经网络计算。对两个真实世界数据集进行了广泛的实验,以核实拟议的算法验证。评价结果表明,拟议的算法在最大程度上反映了MAE、RMEE、AUC和F1的用户能力。