Personalized Recommendation
Personalized recommendation systems aim to provide users with tailored content or products based on their individual preferences and behaviors. Current research focuses on enhancing recommendation accuracy and explainability through hybrid models combining collaborative filtering with content-based approaches (e.g., integrating language models like BERT or mT5 with collaborative filtering), exploring the use of graph neural networks and transformers to process complex user interaction data, and developing more robust and efficient algorithms for large-scale applications. These advancements have significant implications for various industries, improving user experience and driving business outcomes by optimizing content delivery and marketing strategies.
Papers
AI Recommendation System for Enhanced Customer Experience: A Novel Image-to-Text Method
Mohamaed Foued Ayedi, Hiba Ben Salem, Soulaimen Hammami, Ahmed Ben Said, Rateb Jabbar, Achraf CHabbouh
Group-Aware Interest Disentangled Dual-Training for Personalized Recommendation
Xiaolong Liu, Liangwei Yang, Zhiwei Liu, Xiaohan Li, Mingdai Yang, Chen Wang, Philip S. Yu
Randomized algorithms for precise measurement of differentially-private, personalized recommendations
Allegra Laro, Yanqing Chen, Hao He, Babak Aghazadeh
Heterogeneous Knowledge Fusion: A Novel Approach for Personalized Recommendation via LLM
Bin Yin, Junjie Xie, Yu Qin, Zixiang Ding, Zhichao Feng, Xiang Li, Wei Lin