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Preserving the Privacy of Social Recommendation with a Differentially Private Approach

机译:用差别私立方法保留社会建议的隐私

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With the popularity of social networks such as Facebook and twitter, social recommendations have become possible, which rely on individual's social connections in order to make personalized recommendations of ads, content, products, and people. Since recommendations involving sensitive information, adversaries may re-identify a user's sensitive information from the recommendation results using background information. This paper proposes a privacy preserving approach to address the problem in the context of social recommendation in a strict privacy notion, called differential privacy. The approach incorporates a clustering method to group users according to the structure of the target social network. Then use the weighted paths as the utility function, which measures the recommendation utility. It adds Laplace noise to the weight of social graph to inject perturbation. Experimental analysis are provided to show the proposed approach can ensure differential privacy while retaining the utility of social recommendation.
机译:由于Facebook和Twitter等社交网络的普及,社会建议成为可能,依赖个人的社交联系,以便为广告,内容,产品和人员提供个性化建议。由于涉及敏感信息的建议,对手可以使用背景信息从推荐结果中重新识别用户的敏感信息。本文提出了一种隐私保留方法,以解决严格隐私概念的社会建议背景下的问题,称为差别隐私。该方法包括根据目标社交网络的结构对用户进行聚类方法。然后使用加权路径作为实用程序函数,从而测量推荐实用程序。它为社会图的重量添加了拉普拉斯噪声以注入扰动。提供实验分析以显示所提出的方法可以确保差别隐私,同时保留社会建议的效用。

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