Challenging the Myth of Graph Collaborative Filtering: a Reasoned and Reproducibility-driven Analysis
Anelli, Vito Walter, Malitesta, Daniele, Pomo, Claudio, Bellogín, Alejandro, Di Noia, Tommaso, Di Sciascio, Eugenio
–arXiv.org Artificial Intelligence
These groundbreaking models are designed to represent users and items as a bipartite, undirected graph, unlocking a whole new level of high-order relationships that were previously almost unattainable. Not only they do achieve better accuracy than their predecessors, but they are also setting a new standard for modern recommender systems [20, 28, 47, 79]. In recent years, great effort has been devoted in creating GNN-based models that address the critical issues of existing models, such as the over-smoothing phenomenon [12] and scalability issues [87]. These cutting-edge models are taking the world of recommender systems by storm and ushering in a new era of accuracy [41, 47, 51, 59, 81]. Over the past ten years, the application of neural techniques rooted in graph representation learning, such as graph convolutional networks [35] (GCNs), has introduced a fresh perspective on traditional collaborative filtering (CF) approaches. Rather than relying solely on user-item interactions for optimization [29, 36, 55], GCN-based methods enable the extraction of both short-and long-distance user preferences toward items [71]. By incorporating multi-hop relationships into the embeddings of users and items, these learned profiles yield more precise recommendations, as evidenced in the literature [28, 47].
arXiv.org Artificial Intelligence
Aug-1-2023