AI RESEARCH
Learning Behaviorally Grounded Item Embeddings via Personalized Temporal Contexts
arXiv CS.LG
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ArXi:2604.15581v1 Announce Type: cross Effective user modeling requires distinguishing between short-term and long-term preference evolution. While item embeddings have become a key component of recommender systems, standard approaches like Item2Vec treat user histories as unordered sets (bag-of-items), implicitly assuming that interactions separated by minutes are as semantically related as those separated by months. This simplification flattens the rich temporal structure of user behavior, obscuring the distinction between coherent consumption sessions and gradual interest drifts.