Privacy Preserving Collaborative Filtering Using Data Obfuscation

Rupa Parameswaran, D. Blough
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引用次数: 59

Abstract

Collaborative filtering (CF) systems are being widely used in E-commerce applications to provide recommendations to users regarding products that might be of interest to them. The prediction accuracy of these systems is dependent on the size and accuracy of the data provided by users. However, the lack of sufficient guidelines governing the use and distribution of user data raises concerns over individual privacy. Users often provide the minimal information that is required for accessing these E-commerce services. In this paper, we propose a framework for obfuscating sensitive information in such a way that it protects individual privacy and also preserves the information content required for collaborative filtering. An experimental evaluation of the performance of different CF systems on the obfuscated data proves that the proposed technique for privacy preservation does not impact the accuracy of the predictions. The proposed framework also makes it possible for multiple E-commerce sites to share data in a privacy preserving manner. Problems such as the cold-start scenario faced by new E-commerce vendors, and biased results due to insufficient users, are resolved by using a shared CF server. We describe a centralized CF server model in which a centralized CF server makes recommendations by consolidating the information received from multiple sources.
利用数据混淆保护隐私的协同过滤
协同过滤(CF)系统在电子商务应用程序中被广泛使用,以向用户提供他们可能感兴趣的产品的推荐。这些系统的预测准确性取决于用户提供的数据的大小和准确性。然而,缺乏足够的指导方针来管理用户数据的使用和分发,这引起了人们对个人隐私的担忧。用户通常只提供访问这些电子商务服务所需的最少信息。在本文中,我们提出了一种模糊敏感信息的框架,这种框架既保护了个人隐私,又保留了协同过滤所需的信息内容。实验评估了不同CF系统在混淆数据上的性能,证明了所提出的隐私保护技术不会影响预测的准确性。该框架还使多个电子商务网站能够以保护隐私的方式共享数据。通过使用共享的CF服务器,解决了新电商面临的冷启动场景、用户不足导致的结果偏差等问题。我们描述了一个集中式CF服务器模型,其中集中式CF服务器通过整合从多个来源接收的信息来提出建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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