Movie Recommendation
Movie recommendation systems aim to personalize user experiences by suggesting relevant films, but challenges remain in mitigating biases, ensuring fairness, and improving the user experience. Current research focuses on developing more robust algorithms, such as ensemble learning and diffusion models, to handle noisy data and address issues like popularity bias and group unfairness, while also exploring explainable AI techniques to enhance user trust and understanding. These advancements have significant implications for both the scientific understanding of user preferences and the practical design of more effective and ethical recommendation systems across various online platforms.
Papers
Movie Recommendation with Poster Attention via Multi-modal Transformer Feature Fusion
Linhan Xia, Yicheng Yang, Ziou Chen, Zheng Yang, Shengxin Zhu
Transforming Movie Recommendations with Advanced Machine Learning: A Study of NMF, SVD,and K-Means Clustering
Yubing Yan, Camille Moreau, Zhuoyue Wang, Wenhan Fan, Chengqian Fu
The MovieLens Beliefs Dataset: Collecting Pre-Choice Data for Online Recommender Systems
Guy Aridor, Duarte Goncalves, Ruoyan Kong, Daniel Kluver, Joseph Konstan
Review of Deep Representation Learning Techniques for Brain-Computer Interfaces and Recommendations
Pierre Guetschel, Sara Ahmadi, Michael Tangermann
Prompt engineering paradigms for medical applications: scoping review and recommendations for better practices
Jamil Zaghir, Marco Naguib, Mina Bjelogrlic, Aurélie Névéol, Xavier Tannier, Christian Lovis
Fair Recommendations with Limited Sensitive Attributes: A Distributionally Robust Optimization Approach
Tianhao Shi, Yang Zhang, Jizhi Zhang, Fuli Feng, Xiangnan He