4.8 Article

An Efficient Non-Negative Matrix-Factorization-Based Approach to Collaborative Filtering for Recommender Systems

期刊

IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS
卷 10, 期 2, 页码 1273-1284

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TII.2014.2308433

关键词

Collaborative filtering (CF); non-negative matrix-factorization (NMF); recommender system; single-element-based approach; Tikhonov regularization

资金

  1. National Natural Science Foundation of China [61202347, 61272194, 61103036]
  2. U.S. National Science Foundation [CMMI-1162482]
  3. Fundamental Research Funds for the Central Universities [CDJZR12180012]
  4. Natural Science Foundation Project of CQ CSTC [cstc2012jjA40016, cstc2012jjA40002]
  5. Div Of Civil, Mechanical, & Manufact Inn
  6. Directorate For Engineering [1162482] Funding Source: National Science Foundation

向作者/读者索取更多资源

Matrix-factorization (MF)-based approaches prove to be highly accurate and scalable in addressing collaborative filtering (CF) problems. During the MF process, the non-negativity, which ensures good representativeness of the learnt model, is critically important. However, current non-negative MF (NMF) models are mostly designed for problems in computer vision, while CF problems differ from them due to their extreme sparsity of the target rating-matrix. Currently available NMF-based CF models are based on matrix manipulation and lack practicability for industrial use. In this work, we focus on developing an NMF-based CF model with a single-element-based approach. The idea is to investigate the non-negative update process depending on each involved feature rather than on the whole feature matrices. With the non-negative single-element-based update rules, we subsequently integrate the Tikhonov regularizing terms, and propose the regularized single-element-based NMF (RSNMF) model. RSNMF is especially suitable for solving CF problems subject to the constraint of non-negativity. The experiments on large industrial datasets show high accuracy and low-computational complexity achieved by RSNMF.

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