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Privacy-preserving concordance-based recommendations on vertically distributed data

机译:隐私保留基于一致的垂直分布式数据的建议

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Recommender systems are attractive components of e-commerce. Customers apply such systems to get help for choosing the appropriate product to purchase. To provide accurate and dependable referrals, recommender systems require sufficient user data. On the other hand, since people purchase products from different online vendors, collected user data for recommendation purposes might be distributed among several e-companies. Consequently, due to distributed data, such companies having inadequate data cannot provide truthful predictions. To overcome this challenge, data holders might want to collaborate. However, due to privacy and financial fears, they might hesitate to partnership. In this paper, we propose a concordance measure-based solution that enables data holders to produce recommendations without jeopardizing their privacy. We perform real data set-based experiments and analyze the solution in terms of privacy and extra costs. The experimental results show that e-companies can produce more accurate recommendations by employing the provided scheme.
机译:推荐系统是电子商务的有吸引​​力的组成部分。客户应用此类系统来获取选择购买适当产品的帮助。为了提供准确和可靠的推荐,推荐系统需要足够的用户数据。另一方面,由于人们从不同的在线供应商购买产品,因此可以在几家电子公司中分发收集的建议目的的用户数据。因此,由于分布式数据,具有不充分数据的公司无法提供真实的预测。为了克服这一挑战,数据持有者可能想要协作。但是,由于隐私和金融恐惧,他们可能犹豫不决。在本文中,我们提出了一种基于一致的基于措施的解决方案,使数据持有人能够在不危及其隐私的情况下产生建议。我们执行基于数据集的实验,并在隐私和额外费用方面分析解决方案。实验结果表明,电子公司可以通过雇用提供的计划来生产更准确的建议。

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