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Automatic Evaluation of Recommendation Models
2020
The paper presents an overview of state-of-the-art algorithms used in recommender systems. We discuss the goal of collaborative filtering (CF) as well as different approaches to the method. Specifically, we talk about Singular Value Decomposition (including optimizations, bias, time sensitive Singular Value Decomposition (SVD) and enhanced SVD methods as SVD++), clustering approaches (using K means clustering). We also discuss deep learning methods applied to recommender systems, such as
doi:10.25559/sitito.16.202002.398-406
fatcat:yqkavcu5zfhjxmsoezyg7d7nfm