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Secure Collaborative Outsourced k-Nearest Neighbor Classification with Multiple Owners in Cloud Environment

机译:云环境中具有多个所有者的安全协作外包k-最近邻居分类

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With the advent of big data era, it's becoming an increasing trend for different clients lack of computational resources to cooperate in outsourcing data mining tasks to cloud service providers in order to produce maximum value of the joint database. Generally, the outsourced data contributed by clients should be encrypted under different keys owing to security concerns. Unfortunately, existing privacy-preserving outsourcing protocols are either restricted to a single key setting or quite inefficient due to frequent server-client interactions, making the deployment far from practical. In this paper, we focus on outsourced k-Nearest Neighbor (kNN) classification over encrypted data under multiple keys, and propose a set of secure building blocks and the Secure Collaborative Outsourced kNN (SCOkNN) protocol. Theoretical analysis shows that the proposed protocol protects the confidentiality of data from data owners, privacy of query, and access patterns in the semi-honest model with negligible computation and communication costs. Experimental evaluation also demonstrates its practicability and efficiency.
机译:随着大数据时代的到来,越来越多的缺乏计算资源的客户开始合作,将数据挖掘任务外包给云服务提供商,以实现联合数据库的最大价值。通常,出于安全考虑,应使用不同的密钥对客户端提供的外包数据进行加密。不幸的是,由于频繁的服务器-客户端交互,现有的保护隐私的外包协议要么被限制为单个密钥设置,要么效率很低,这使得部署远非可行。在本文中,我们将重点放在多个密钥下加密数据的外包k最近邻(kNN)分类中,并提出了一组安全构件和安全协作外包kNN(SCOkNN)协议。理论分析表明,所提出的协议以可忽略的计算和通信成本来保护数据的机密性,防止数据所有者的机密性,查询的私密性以及半诚实模型中的访问模式。实验评估也证明了其实用性和有效性。

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