• DocumentCode
    3704166
  • Title

    Similarity Measure Based on Low-Rank Approximation for Highly Scalable Recommender Systems

  • Author

    Sepideh Seifzadeh;Ali Miri

  • Author_Institution
    Privacy &
  • Volume
    2
  • fYear
    2015
  • Firstpage
    66
  • Lastpage
    71
  • Abstract
    Recommender systems are mostly used to make the appropriate personalized recommendation for different customers. Collaborative filtering recommendation is one of the most popular methods among E-commerce systems, but it has some shortcomings, such as cold starts, in which the system fails to consider items which no one in the community has rated previously, and sparse data, which is caused by a low number of rankings by users which results in a sparse similarity matrix. Most of the existing approaches have shortcomings of sparsity and scalability. In this paper we propose a method that approximates the matrix of users similarities with Nyström low-rank approximations and is based on Collaborative Filtering (CF). The proposed method avoids the high computation cost of Singular Value Decomposition (SVD) and also enables us to use the low-rank approximation of the similarity matrix to handle huge datasets with low computation costs. The experimental results show that the proposed approach can solve the problem of sparsity, while increasing the efficiency and scalability of the system.
  • Keywords
    "Correlation","Approximation methods","Collaboration","Recommender systems","Matrix decomposition","Semantics","Prediction algorithms"
  • Publisher
    ieee
  • Conference_Titel
    Trustcom/BigDataSE/ISPA, 2015 IEEE
  • Type

    conf

  • DOI
    10.1109/Trustcom.2015.563
  • Filename
    7345476