Privacy-Preserving Trust-Based Recommendations on Vertically Distributed Data

C. Kaleli, H. Polat
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引用次数: 8

Abstract

Providing recommendations on trusts between entities is receiving increasing attention lately. Customers may prefer different online vendors for shopping. Thus, their preferences about various products might be distributed among multiple parties. To provide more accurate and reliable referrals, such companies might decide to collaborate. Due to privacy, legal, and financial reasons, however, they do not want to work jointly. In this paper, we propose a method for providing trust-based predictions on vertically distributed data while preserving data owners' confidentiality. We analyze our scheme in terms of privacy and performance. We also perform experiments for accuracy analysis. Our analyses show that our scheme is secure and able to provide accurate and reliable predictions efficiently.
垂直分布数据基于信任的隐私保护建议
最近,就实体之间的信任问题提出建议日益受到重视。消费者可能更喜欢不同的网上购物供应商。因此,他们对各种产品的偏好可能会在多个参与方之间分布。为了提供更准确和可靠的推荐,这些公司可能会决定合作。然而,由于隐私、法律和经济原因,他们不想合作。在本文中,我们提出了一种方法,在保持数据所有者的机密性的同时,对垂直分布的数据提供基于信任的预测。我们从隐私和性能方面分析了我们的方案。我们还进行了精度分析实验。分析表明,该方案安全可靠,能够有效地提供准确可靠的预测。
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