The following publications are possibly variants of this publication:
- Cold-Start Sequential Recommendation with Collaborative Boosted Meta Transitional LearningGuoan Wang, Xingjun Wang. dsit 2022: 1-5 [doi]
- Multimodal Meta-Learning for Cold-Start Sequential RecommendationXingyu Pan, Yushuo Chen, Changxin Tian, Zihan Lin, Jinpeng Wang, He Hu 0001, Wayne Xin Zhao. CIKM 2022: 3421-3430 [doi]
- A Collaborative Filtering Recommendation Algorithm Based on Item Similarity of User PreferenceTieli Sun, Lijun Wang, Qinghe Guo. wkdd 2009: 60-63 [doi]
- Meta Policy Learning for Cold-Start Conversational RecommendationZhendong Chu, Hongning Wang, Yun Xiao, Bo Long, Lingfei Wu. wsdm 2023: 222-230 [doi]
- Preference-Adaptive Meta-Learning for Cold-Start RecommendationLi Wang, Binbin Jin, Zhenya Huang, Hongke Zhao, Defu Lian, Qi Liu, Enhong Chen. IJCAI 2021: 1607-1614 [doi]
- A Cold-Start Recommendation Algorithm Based on New User s Implicit Information and Multi-attribute Rating MatrixHang Yin, Guiran Chang, Xingwei Wang. his 2009: 353-358 [doi]
- AdaML: An Adaptive Meta-Learning model based on user relevance for user cold-start recommendationJia Xu 0005, Hongming Zhang, Xin Wang, Pin Lv. kbs, 279:110925, November 2023. [doi]
- Task-Difficulty-Aware Meta-Learning with Adaptive Update Strategies for User Cold-Start RecommendationXuhao Zhao, Yanmin Zhu, Chunyang Wang, Mengyuan Jing, Jiadi Yu, Feilong Tang. CIKM 2023: 3484-3493 [doi]