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首页> 外文期刊>International Journal of Information Technology & Decision Making >PRIVACY-PRESERVING RANDOM PROJECTION-BASED RECOMMENDATIONS BASED ON DISTRIBUTED DATA
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PRIVACY-PRESERVING RANDOM PROJECTION-BASED RECOMMENDATIONS BASED ON DISTRIBUTED DATA

机译:基于分布式数据的基于隐私保留的投影的建议

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摘要

Providing recommendations based on distributed data has received an increasing amount of attention because it offers several advantages. Online vendors who face problems caused by a limited amount of available data want to offer predictions based on distributed data collaboratively because they can surmount problems such as cold start, limited coverage, and unsatisfactory accuracy through partnerships. It is relatively easy to produce referrals based on distributed data when privacy is not a concern. However, concerns regarding the protection of private data, financial fears due to revealing valuable assets, and legal regulations imposed by various organizations prevent companies from forming collaborations. In this study, we propose to use random projection to protect online vendors' privacy while still providing accurate predictions from distributed data without sacrificing online performance. We utilize random projection to eliminate the aforementioned issues so vendors can work in partnerships. We suggest privacy-preserving schemes to offer recommendations based on vertically or horizontally partitioned data among multiple companies. The recommended methods are analyzed in terms of confidentiality. We also analyze the superfluous loads caused by privacy concerns. Finally, we perform real data-based trials to evaluate the accuracy of the proposed schemes. The results of our analyses show that our methods preserve privacy, cause insignificant overheads, and offer accurate predictions.
机译:提供基于分布式数据的建议已受到越来越多的关注,因为它具有多个优点。面临因可用数据量有限而引起的问题的在线供应商希望合作提供基于分布式数据的预测,因为他们可以克服诸如冷启动,覆盖范围有限以及通过合作伙伴关系的准确性不佳之类的问题。当不关心隐私时,基于分布式数据生成引用相对容易。但是,由于担心保护私有数据,由于揭示有价值的资产而引起的财务担忧以及各种组织实施的法律法规,导致公司无法开展协作。在本研究中,我们建议使用随机投影来保护在线供应商的隐私,同时仍然在不牺牲在线性能的前提下,根据分布式数据提供准确的预测。我们利用随机预测来消除上述问题,以便供应商可以合作。我们建议采用隐私保护方案,以根据多家公司之间垂直或水平划分的数据提供建议。建议的方法将根据机密性进行分析。我们还将分析由隐私问题引起的多余负载。最后,我们进行了基于数据的真实试验,以评估所提出方案的准确性。我们的分析结果表明,我们的方法可以保护隐私,减少不必要的开销并提供准确的预测。

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