Recommendation Task
Recommendation tasks aim to predict user preferences and suggest relevant items, improving user experience across various domains. Current research heavily focuses on integrating large language models (LLMs) with collaborative filtering techniques, exploring architectures like hierarchical LLMs and hybrid models that combine textual and ID-based information to enhance recommendation accuracy, particularly in cold-start scenarios and long-tail items. This active research area is significant because improved recommendation systems directly impact user engagement and satisfaction in e-commerce, social media, and other applications, while also presenting novel challenges in model design, evaluation, and bias mitigation.
Papers
Ad-Rec: Advanced Feature Interactions to Address Covariate-Shifts in Recommendation Networks
Muhammad Adnan, Yassaman Ebrahimzadeh Maboud, Divya Mahajan, Prashant J. Nair
RecMind: Large Language Model Powered Agent For Recommendation
Yancheng Wang, Ziyan Jiang, Zheng Chen, Fan Yang, Yingxue Zhou, Eunah Cho, Xing Fan, Xiaojiang Huang, Yanbin Lu, Yingzhen Yang
Extreme Multilabel Classification for Specialist Doctor Recommendation with Implicit Feedback and Limited Patient Metadata
Filipa Valdeira, Stevo Racković, Valeria Danalachi, Qiwei Han, Cláudia Soares
Age Recommendation from Texts and Sentences for Children
Rashedur Rahman, Gwénolé Lecorvé, Nicolas Béchet