Effective Recommendation
Effective recommendation aims to predict user preferences and provide personalized suggestions, focusing on improving accuracy, efficiency, and fairness. Current research emphasizes incorporating diverse data sources (e.g., multimodal information, user reviews, knowledge graphs) and advanced model architectures (e.g., graph neural networks, large language models, and various contrastive learning methods) to address challenges like cold-start problems and noisy user data. These advancements are significant for enhancing user experience in various applications (e.g., e-commerce, entertainment, job recruitment) and for developing more robust and explainable recommendation systems.
Papers
From Data to Decisions: The Transformational Power of Machine Learning in Business Recommendations
Kapilya Gangadharan, K. Malathi, Anoop Purandaran, Barathi Subramanian, Rathinaraja Jeyaraj
Food Recommendation as Language Processing (F-RLP): A Personalized and Contextual Paradigm
Ali Rostami, Ramesh Jain, Amir M. Rahmani
Harnessing PubMed User Query Logs for Post Hoc Explanations of Recommended Similar Articles
Ashley Shin, Qiao Jin, James Anibal, Zhiyong Lu
Intersectional Two-sided Fairness in Recommendation
Yifan Wang, Peijie Sun, Weizhi Ma, Min Zhang, Yuan Zhang, Peng Jiang, Shaoping Ma
Denoising Time Cycle Modeling for Recommendation
Sicong Xie, Qunwei Li, Weidi Xu, Kaiming Shen, Shaohu Chen, Wenliang Zhong