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Effective Matrix Factorization for Recommendation with Local Differential Privacy

机译:具有当地差异隐私的建议的有效矩阵分解

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With the continuous upgrading of smart devices, people are using smartphones more and more frequently. People not only browse the information they need on the Internet, but also more and more people get daily necessities through online shopping. Faced with a variety of recommendation systems, it becomes more and more difficult for people to keep their privacy from being collected while using them. Therefore, ensuring the privacy security of users when they use the recommendation system is increasingly becoming the focus of people. This paper summarizes the related technologies. A recommendation algorithm based on collaborative filtering, matrix factorization as well as the randomized response is proposed, which satisfies local differential privacy (LDP). Besides, this paper also discusses the key technologies used in privacy protection in the recommendation system. Besides, This paper includes the algorithm flow of the recommendation system. Finally, the experiment proves that our algorithm has higher accuracy while guaranteeing user privacy.
机译:随着智能设备的持续升级,人们越来越频繁地使用智能手机。人们不仅浏览互联网上所需的信息,而且更多的人通过在线购物获得日常生活。面对各种推荐系统,对于人们在使用它们时,人们将越来越困难。因此,确保用户使用推荐系统的隐私安全越来越成为人们的重点。本文总结了相关技术。提出了一种基于协作滤波的推荐算法,矩阵分解以及随机化响应,其满足局部差异隐私(LDP)。此外,本文还讨论了建议系统中隐私保护中使用的关键技术。此外,本文包括推荐系统的算法流程。最后,实验证明,我们的算法在保证用户隐私的同时具有更高的准确性。

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