Privacy Enhanced Matrix Factorization for Recommendation with Local Differential Privacy.

IEEE Transactions on Knowledge and Data Engineering(2018)

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摘要
Recommender systems are collecting and analyzing user data to provide better user experience. However, several privacy concerns have been raised when a recommender knows user's set of items or their ratings. A number of solutions have been suggested to improve privacy of legacy recommender systems, but the existing solutions in the literature can protect either items or ratings only. In this paper...
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关键词
Privacy,Recommender systems,Data privacy,Perturbation methods,Dimensionality reduction,Motion pictures,Servers
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