AI RESEARCH

CAST: Modeling Semantic-Level Transitions for Complementary-Aware Sequential Recommendation

arXiv CS.LG

ArXi:2604.19414v1 Announce Type: cross Sequential Recommendation (SR) aims to predict the next interaction of a user based on their behavior sequence, where complementary relations often provide essential signals for predicting the next item. However, mainstream models relying on sparse co-purchase statistics often mistake spurious correlations (e.g., due to popularity bias) for true complementary relations. Identifying true complementary relations requires capturing the fine-grained item semantics (e.g., specifications) that simple cooccurrence statistics would be unable to model.