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Multi-objective optimization based privacy preserving distributed data mining in Peer-to-Peer networks - Springer

机译:对等网络中基于多目标优化的隐私保护分布式数据挖掘-Springer

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摘要

This paper proposes a scalable, local privacy-preserving algorithm for distributed Peer-to-Peer (P2P) data aggregation useful for many advanced data mining/analysis tasks such as average/sum computation, decision tree induction, feature selection, and more. Unlike most multi-party privacy-preserving data mining algorithms, this approach works in an asynchronous manner through local interactions and it is highly scalable. It particularly deals with the distributed computation of the sum of a set of numbers stored at different peers in a P2P network in the context of a P2P web mining application. The proposed optimization-based privacy-preserving technique for computing the sum allows different peers to specify different privacy requirements without having to adhere to a global set of parameters for the chosen privacy model. Since distributed sum computation is a frequently used primitive, the proposed approach is likely to have significant impact on many data mining tasks such as multi-party privacy-preserving clustering, frequent itemset mining, and statistical aggregate computation.
机译:本文提出了一种可扩展的,用于分布式对等(P2P)数据聚合的本地隐私保护算法,可用于许多高级数据挖掘/分析任务,例如平均/总和计算,决策树归纳,特征选择等。与大多数多方隐私保护数据挖掘算法不同,此方法通过本地交互以异步方式工作,并且具有高度可伸缩性。它特别处理在P2P Web挖掘应用程序的上下文中存储在P2P网络中不同对等点的一组数字的总和的分布式计算。所提出的用于计算和的基于优化的基于隐私的隐私保护技术允许不同的对等方指定不同的隐私要求,而不必遵守所选隐私模型的全局参数集。由于分布式总和计算是一种常用的原始方法,因此所提出的方法可能会对许多数据挖掘任务(如多方隐私保护聚类,频繁项集挖掘和统计聚合计算)产生重大影响。

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