计算机科学
联营
嵌入
推荐系统
理论计算机科学
图形
知识图
人工智能
机器学习
数据挖掘
作者
Yangding Li,Shaobin Fu,Hao Feng,Yangyang Zeng,Jinghao Wang,Zhihao Jiang,Lvyun Zhang
标识
DOI:10.1109/iccsi58851.2023.10304036
摘要
Existing methods for modeling recommendation systems based on knowledge graphs include embedding-based, pathbased, and propagation-based methods. The embedding-based approach is flexible but more suitable for intra-graph applications, the path-based approach can model complex relationships but has a high computational cost, and the propagation-based approach considers global information but may introduce noise. This study proposed a simple and efficient model, called SEKGAT, which comprehensive the ideology of path-based and propagation approach to personalized recommendation by aggregating the user preferences through graph attention mechanism and fusing multiple feature representations on the knowledge graph into item features through pooling aggregators. Experimental results for the CTR prediction and Top-K recommendation tasks on three datasets of real-world scenarios show that our model approach is competitive.
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