Online-updating regularized kernel matrix factorization models for large-scale recommender systems 论文
2008引用 237
Recommender Systems and TechniquesAdvanced Bandit Algorithms ResearchImage Retrieval and Classification Techniques
摘要
Regularized matrix factorization models are known to generate high quality rating predictions for recommender systems. One of the major drawbacks of matrix factorization is that once computed, the model is static. For real-world applications dynamic updating a model is one of the most important tasks. Especially when ratings on new users or new items come in, updating the feature matrices is crucial.