4.1 Article

A Survey of Matrix Completion Methods for Recommendation Systems

期刊

BIG DATA MINING AND ANALYTICS
卷 1, 期 4, 页码 308-323

出版社

TSINGHUA UNIV PRESS
DOI: 10.26599/BDMA.2018.9020008

关键词

matrix completion; collaborative filtering; recommendation systems

资金

  1. National Natural Science Foundation of China [61728211, 1066471]

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In recent years, the recommendation systems have become increasingly popular and have been used in a broad variety of applications. Here, we investigate the matrix completion techniques for the recommendation systems that are based on collaborative filtering. The collaborative filtering problem can be viewed as predicting the favorability of a user with respect to new items of commodities. When a rating matrix is constructed with users as rows, items as columns, and entries as ratings, the collaborative filtering problem can then be modeled as a matrix completion problem by filling out the unknown elements in the rating matrix. This article presents a comprehensive survey of the matrix completion methods used in recommendation systems. We focus on the mathematical models for matrix completion and the corresponding computational algorithms as well as their characteristics and potential issues. Several applications other than the traditional user-item association prediction are also discussed.

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