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Discover Cutting-Edge Research in Pretrained Recommendation Systems

Product DescriptionThis paper list investigates the latest advancements in pretrained recommendation models, highlighting large language models and novel methods in sequence representation and user modeling. It provides a comprehensive overview with various datasets and studies, encouraging community collaboration through open contributions. Read up on significant studies presented at conferences like SIGIR, CIKM, and WSDM, and explore innovative techniques including graph pretraining and generative recommendations, under the guidance of Xiangyang Li from Peking University.
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