Abstract

Contrastive learning (CL) recently has spurred a fruitful line of research in the field of recommendation, since its ability to extract self-supervised signals from the raw data is well-aligned with recommender systems' needs for tackling the data sparsity issue. A typical pipeline of CL-based recommendation models is first augmenting the user-item bipartite graph with structure perturbations, and then maximizing the node representation consistency between different graph augmentations. Although this paradigm turns out to be effective, what underlies the performance gains is still a mystery. In this paper, we first experimentally disclose that, in CL-based recommendation models, CL operates by learning more…

Citation impact

569
total citations
FWCI
77.05
Percentile
100%
References
25
Citations per year

Authors

6

Topics & keywords

Keywords
  • Computer science
  • Recommender system
  • Bipartite graph
  • Graph
  • Embedding
  • Theoretical computer science
  • Popularity
  • Pipeline (software)
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