AI RESEARCH
Multi-modal Relational Item Representation Learning for Inferring Substitutable and Complementary Items
arXiv CS.AI
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ArXi:2507.22268v3 Announce Type: replace-cross We study the problem of inferring substitutable and complementary items, which underpins applications such as alternative and follow-up purchase suggestions. Existing approaches typically learn from behavior-derived item-item associations using GNNs or leverage item content alone. However, these methods often overlook two key challenges: (i) user behaviors (e.g., co-view/co-purchase) only provide noisy weak supervision, and (ii) behavior signals are long-tailed, leaving many items with sparse associations.