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Index Terms
- Enhanced Privacy Preservation for Recommender Systems
Recommendations
Recommender Systems for Privacy Management: A Framework
HASE '14: Proceedings of the 2014 IEEE 15th International Symposium on High-Assurance Systems EngineeringSocial media and online service providers are increasingly collecting personal information. In order for users to make decisions about their online privacy, they will have to read through a dense and hard-to-understand privacy policy. We developed a ...
Differentially private recommender systems: Building privacy into the Netflix Prize contenders
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A game theoretic framework for data privacy preservation in recommender systems
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