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Differential Privacy for Neighborhood-based Collaborative Filtering

机译:基于邻域的协作过滤的差异隐私

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As a popular technique in recommender systems, Collaborative Filtering (CF) has received extensive attention in recent years. However, its privacy-related issues, especially for neighborhood-based CF methods, can not be overlooked. The aim of this study is to address the privacy issues in the context of neighborhood-based CF methods by proposing a Private Neighbor Collaborative Filtering (PNCF) algorithm. The algorithm includes two privacy-preserving operations: Private Neighbor Selection and Recommendation-Aware Sensitivity. Private Neighbor Selection is constructed on the basis of the notion of differential privacy to privately choose neighbors. Recommendation-Aware Sensitivity is introduced to enhance the performance of recommendations. Theoretical and experimental analysis are provided to show the proposed algorithm can preserve differential privacy while retaining the accuracy of recommendations.
机译:作为推荐系统中的流行技术,近年来,协作过滤(CF)已收到广泛的关注。但是,它的隐私相关问题,特别是对于基于邻域的CF方法,不能被忽视。本研究的目的是通过提出私有邻居协同滤波(PNCF)算法来解决基于邻域的CF方法的隐私问题。该算法包括两个隐私保留操作:私有邻居选择和推荐感知感性。私人邻居选择是根据差异隐私的概念构建的,以私下选择邻居。推出推荐意识的感知敏感性,以提高建议的表现。提供了理论和实验分析以显示所提出的算法可以保护差异隐私,同时保留建议的准确性。

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