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
Building Better Datasets: Seven Recommendations for Responsible Design from Dataset Creators
Will Orr, Kate Crawford
Achieving Responsible AI through ESG: Insights and Recommendations from Industry Engagement
Harsha Perera, Sung Une Lee, Yue Liu, Boming Xia, Qinghua Lu, Liming Zhu, Jessica Cairns, Moana Nottage