作者
Amirreza Salamat, Xiao Luo, Ali Jafari
发表日期
2021/4/6
期刊
Knowledge-Based Systems
卷号
217
页码范围
106817
出版商
Elsevier
简介
Recommender systems in social networks are widely used for connecting users to their desired items from a vast catalog of available items. Learning the user’s preferences from all the possible sources of information in an extensive, multi-dimensional social network is one of the main challenges when building such recommenders. Graph Neural Networks have been gaining momentum in recent years and have been successful when dealing with large-scale graphs, and they can be applied to social networks with some modifications. In this research, we propose the HeteroGraphRec, which provides social recommendations by modeling the social network as a heterogeneous graph and utilizing GNNs with attention mechanisms to intelligently aggregate information from all sources when building the connections between user to user, item to item, and user to item. The HeteroGraphRec can gather information about …
引用总数