AI RESEARCH

Dynamic Graph with Similarity-Aware Attention Graph Neural Network for Recommender Systems

arXiv CS.LG

ArXi:2605.05238v1 Announce Type: cross Recommender systems are essential components of modern online platforms which presents personalized content in various domain. The traditional collaborative filtering methods depends on static user-item interaction graphs and a limited subset of similarity measures which fail to capture the changing nature of preferences of an individual. Recent graph neural network (GNN) based approaches focus on user-item bipartite graphs which do not use explicit user-user relational modelling and dynamic graph evolution during.