IEEE Access (Jan 2021)

Privacy-Preserving Matrix Factorization for Cross-Domain Recommendation

  • Taiwo Blessing Ogunseyi,
  • Cossi Blaise Avoussoukpo,
  • Yiqiang Jiang

DOI
https://doi.org/10.1109/ACCESS.2021.3091426
Journal volume & issue
Vol. 9
pp. 91027 – 91037

Abstract

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Cross-domain recommender systems are known to provide solutions to the cold start and data sparsity problems in recommender systems. This can be achieved by leveraging sufficient ratings and users’ profiles in one domain to enhance accurate recommendations in another domain. However, domains with sufficient ratings are not willing to share their users’ ratings with other recommender systems or domains due to users’ privacy and legal concern. Hence this shows a need for a privacy-preserving mechanism that encourages secure knowledge transfer between different domains. This study proposes a privacy-preserving cross-domain recommender system based on matrix factorization. Specifically, the study formally described the privacy requirements of a cross-domain recommender system, which are different from a single domain recommender system. It designs a new framework for a privacy-preserving cross-domain recommender system and then utilized the somewhat homomorphic encryption (SWHE) scheme to ensure users’ privacy. The SWHE scheme was used to encrypt users’ ratings in different domains, shared latent factor approach was implemented between the domains and extracted knowledge was securely transferred from the source domain to the target domain. We prove that users’ privacy is secured throughout the stages involved in the proposed protocol. Experiments on both synthetic and real datasets demonstrate the efficiency of our protocol.

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