Published July 21, 2019
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Introduction to Matrix Factorization for Recommender Systems
Description
Recommender systems aim to personalize the experience of user by suggesting items to the user based on
the preferences of a user. The preferences are learned from the user’s interaction history or through explicit
ratings that the user has given to the items. The system could be part of a retail website, an online bookstore,
a movie rental service or an online education portal and so on. In this paper, I will focus on matrix
factorization algorithms as applied to recommender systems and discuss the singular value decomposition,
gradient descent-based matrix factorization and parallelizing matrix factorization for large scale
applications.
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matrix-factorization-recommender-systems.pdf
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