推荐的局部微分私有矩阵分解

N. Jeyamohan, Xiaomin Chen, N. Aslam
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引用次数: 2

摘要

近年来,推荐系统在电子商务行业变得流行起来,因为它们可以用来为用户提供个性化的体验。然而,对用户信息进行分析也引发了对隐私的担忧。针对用户端的对手,已经提出了各种针对推荐系统的隐私保护机制。然而,他们大多无视服务提供商造成的隐私侵犯。本文提出了一种基于矩阵分解的推荐系统的局部差分隐私机制。在我们的机制中,用户在他们的设备上使用拉普拉斯和随机响应机制扰动他们的评级,并将扰动后的评级发送给服务提供商。我们使用Movielens数据集评估了所提出的机制,并证明它可以在数据效用和用户隐私之间实现令人满意的权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local Differentially Private Matrix Factorization For Recommendations
In recent years recommendation systems have become popular in the e-commerce industry as they can be used to provide a personalized experience to users. However, performing analytics on users’ information has also raised privacy concerns. Various privacy protection mechanisms have been proposed for recommendation systems against user-side adversaries. However most of them disregards the privacy violations caused by the service providers. In this paper, we propose a local differential privacy mechanism for matrix factorization based recommendation systems. In our mechanism, users perturb their ratings locally on their devices using Laplace and randomized response mechanisms and send the perturbed ratings to the service provider. We evaluate the proposed mechanism using Movielens dataset and demonstrate that it can achieve a satisfactory tradeoff between data utility and user privacy.
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