Archive/MGGCL: Motif-Guided Graph Contrastive Learning for Recommendation
MGGCL: Motif-Guided Graph Contrastive Learning for Recommendation
Li Pang, Yuqi Zhang, Nancy Wang et al.
July 1, 2026
en

Abstract

Graph motifs capture crucial structural patterns within user–item interaction graphs and offer meaningful semantics that are typically underutilised in conventional graph-based collaborative filtering. Existing contrastive learning methods in recommender systems rely primarily on simple perturbations, which limits their ability to leverage deeper motif-based structural information. To address this gap, we propose a novel motif-guided contrastive learning framework for recommender systems. To exploit complementary structural biases inherent to user–item interactions, our approach explicitly incorporates three distinct motifs into the construction of the contrastive view. By contrasting views that capture the structural differences among different motifs, our model learns meaningful group-level relationships and potentially suppresses noise arising from sparse or isolated interactions. Extensive experiments on four real-world recommendation datasets validate that our motif-based contrastive approach achieves the best overall performance, outperforming state-of-the-art baselines on three of the four benchmarks with statistically significant margins on the more skewed datasets, while remaining competitive on the fourth, which demonstrates notable robustness and improved accuracy.

IPC Classification

G06

Keywords

mggclmotif-guidedgraphcontrastivelearningrecommendationinformationmotifscapturecrucialstructuralpatternswithinuseriteminteractiongraphsoffermeaningfulsemanticstypicallyunderutilisedconventionalgraph-based
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