Recommendation System
Recommendation systems aim to predict user preferences and provide personalized suggestions, primarily focusing on improving accuracy, diversity, and efficiency. Current research emphasizes incorporating diverse data sources (text, images, location, user interactions across platforms) into sophisticated models, including transformer networks, graph neural networks, and large language models, often within federated learning frameworks to address privacy concerns. These advancements are crucial for enhancing user experience across various applications (e-commerce, social media, search engines) and for developing more robust, explainable, and bias-mitigated systems.
Papers
Ad Recommendation in a Collapsed and Entangled World
Junwei Pan, Wei Xue, Ximei Wang, Haibin Yu, Xun Liu, Shijie Quan, Xueming Qiu, Dapeng Liu, Lei Xiao, Jie Jiang
MerRec: A Large-scale Multipurpose Mercari Dataset for Consumer-to-Consumer Recommendation Systems
Lichi Li, Zainul Abi Din, Zhen Tan, Sam London, Tianlong Chen, Ajay Daptardar
Misalignment, Learning, and Ranking: Harnessing Users Limited Attention
Arpit Agarwal, Rad Niazadeh, Prathamesh Patil
Breaking the Barrier: Utilizing Large Language Models for Industrial Recommendation Systems through an Inferential Knowledge Graph
Qian Zhao, Hao Qian, Ziqi Liu, Gong-Duo Zhang, Lihong Gu