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An efficient multi-party scheme for privacy preserving collaborative filtering for healthcare recommender system

机译:用于医疗保健推荐系统的隐私保护协作过滤的高效多方计划

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Patient oriented decision-making in medical domains can enhance the efficiency of the modern healthcare recommender system provided the data scattered across different geographical regions is collected, mined and analyzed efficiently. Different sites, having Arbitrary Distributed Data (ADD) of healthcare services at various nodes can collaborate with each other to generate customer’s preference leading to mutual advantage and overcoming of the issues related to insufficient ratings of various medical services. However, due to privacy, financial and legal issues, different parties defer from sharing their confidential data. If the parties are assured of data confidentiality, they might agree for fruitful collaboration. Few existing studies proposed Privacy Preserving Collaborative Filtering (PPCF) on ADD, but these techniques considered only two parties. Moreover, the computation cost of off-line model generation process is high since these techniques use homomorphic encryption techniques. To fill these gaps, this paper propose PPCF scheme on ADD based on multi-party random masking and polynomial aggregation techniques. In the proposal, two phases are considered namely as: off-line model generation and online prediction generation. Three protocols have been considered for privacy preservation so that analysis of each protocol is performed separately. The Paillier homomorphic encryption system is also used to calculate the length of vectorXsecurely, so that only additive property of homomorphic encryption is used. Analysis of the proposed scheme has been done for security, accuracy, coverage and performance on healthcare and Movieslens datasets. It has been experimentally demonstrated that the proposed scheme maintains data owner’s confidentiality, and privacy measure so that it does not affect the accuracy of prediction generation on integrated data. Comparative analysis of the proposed scheme has also been done with other related schemes based on off-line and online computation overheads. The results obtained demonstrated that the proposed scheme has significant improvement by a factor of 36% (approx) with respect to the aforementioned parameters.
机译:如果可以有效地收集,挖掘和分析分散在不同地理区域中的数据,则在医疗领域中以患者为导向的决策可以提高现代医疗推荐系统的效率。在各个节点具有医疗服务任意分布数据(ADD)的不同站点可以彼此协作,以产生客户的偏好,从而导致互利互惠,并克服与各种医疗服务的评级不足有关的问题。但是,由于隐私,财务和法律问题,不同的各方不愿共享其机密数据。如果确保各方对数据保密,则他们可能同意进行富有成效的合作。现有的研究很少提出关于ADD的隐私保护协作过滤(PPCF),但是这些技术仅考虑了两个方面。此外,由于这些技术使用同态加密技术,因此离线模型生成过程的计算成本很高。为了填补这些空白,本文提出了基于多方随机掩蔽和多项式聚合技术的ADD PPCF方案。在提案中,考虑了两个阶段,即:离线模型生成和在线预测生成。已经考虑了三种协议来保护隐私,以便分别进行每个协议的分析。 Paillier同态加密系统还用于安全地计算vectorX的长度,因此仅使用同态加密的加性。已针对医疗保健和Movieslens数据集的安全性,准确性,覆盖范围和性能对提议的方案进行了分析。实验证明,该方案可以维护数据所有者的机密性和隐私权,从而不会影响集成数据的预测生成的准确性。还基于离线和在线计算开销,与其他相关方案对提议的方案进行了比较分析。所获得的结果表明,相对于上述参数,所提出的方案具有显着的36%的改善。

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