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Arbitrarily distributed data-based recommendations with privacy

机译:具有隐私权的任意分发的基于数据的建议

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Collaborative filtering (CF) systems use customers' preferences about various products to offer recommendations. Providing accurate and reliable predictions is vital for both e-commerce companies and their customers. To offer such referrals, CF systems should have sufficient data. When data collected for CF purposes held by a central server, it is an easy task to provide recommendations. However, customers' preferences represented as ratings might be partitioned between two vendors. To supply trustworthy and correct predictions, such companies might desire to collaborate. Due to privacy concerns, financial fears, and legal issues; however, the parties may not want to disclose their data to each other. In this study, we scrutinize how to estimate item-based predictions on arbitrarily distributed data (ADD) between two e-commerce sites without deeply jeopardizing their privacy. We analyze our proposed scheme in terms of privacy; and demonstrate that the method does not intensely violate data owners' confidentiality. We conduct experiments using real data sets to show how coverage and quality of the predictions improve due to collaboration. We also investigate our scheme in terms of online performance; and demonstrate that supplementary online costs caused by privacy measures are negligible. Moreover, we perform trials to show how privacy concerns affect accuracy. Our results show that accuracy and coverage improve due to collaboration; and the proposed scheme is still able to offer truthful predictions with privacy concerns.
机译:协作过滤(CF)系统使用客户对各种产品的偏好来提供建议。提供准确和可靠的预测对于电子商务公司及其客户都是至关重要的。为了提供此类推荐,CF系统应具有足够的数据。当中央服务器保存用于CF目的的数据时,提供建议很容易。但是,以评分表示的客户偏好可能会在两个供应商之间划分。为了提供可信赖且正确的预测,此类公司可能希望合作。由于隐私问题,财务担忧和法律问题;但是,双方可能不想彼此公开其数据。在这项研究中,我们详细研究了如何估计两个电子商务站点之间任意分布数据(ADD)的基于项目的预测,而又不会严重损害其隐私。我们从隐私方面分析了我们提出的方案;并证明该方法并未严重违反数据所有者的机密性。我们使用真实的数据集进行实验,以显示由于协作,预测的覆盖范围和质量如何提高。我们还会根据在线效果调查我们的计划;并证明由隐私措施引起的附加在线费用可以忽略不计。此外,我们进行了试验以显示隐私问题如何影响准确性。我们的结果表明,由于协作,准确性和覆盖率得以提高;并且提出的方案仍然能够提供有关隐私问题的真实预测。

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