Matrix factorization is one of the most successful model-based collaborative filtering approaches in recommender systems. Nevertheless, useful latent user features can lead to a more accurate recommendation. However, user privacy and cross-domains access restrictions challenge collection and analysis of such information. In this study, we propose a feature extraction method (WAFE) which leverages user-item interaction history to extract useful latent user features. We also propose a rating prediction approach that incorporates the local mean of users' and items' ratings. We evaluate our proposed model using two real-world benchmark datasets and compare its performance against the state-of-The-Art matrix factorization collaborative filtering methods. Evaluation results show that proposed method outperforms the existing methods.
History
School
Science
Department
Computer Science
Published in
2020 IEEE 21st International Conference on Information Reuse and Integration for Data Science (IRI)
Pages
349 - 356
Source
2020 IEEE 21st International Conference on Information Reuse and Integration for Data Science (IRI)