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Third Party Data Clustering Over Encrypted Data Without Data Owner Participation: Introducing the Encrypted Distance Matrix

机译:没有数据所有者参与的基于加密数据的第三方数据聚类:引入加密距离矩阵

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The increasing demand for Data Mining as a Service, using cloud storage, has raised data security concerns. Standard data encryption schemes are unsuitable because they do not support the mathematical operations that data mining requires. Homomorphic and Order Preserving Encryption provide a potential solution. Existing work, directed at data clustering, has demonstrated that using such schemes provides for secure data mining. However, to date, all proposed approaches have entailed some degree of data owner participation, in many cases the amount of participation is substantial. This paper proposes an approach to secure data clustering that does not require any data owner participation (once the data has been encrypted). The approach operates using the idea of an Encrypted Distance Matrix (EDM) which, for illustrative purposes, has been embedded in an approach to secure third-party data clustering - the Secure Nearest Neighbour Clustering (SNNC) approach, that uses order preserving and homomorphic encryption. Both the EDM concept and the SNNC approach are fully described.
机译:使用云存储对数据挖掘即服务的需求不断增长,这引起了数据安全性的担忧。标准数据加密方案不适用,因为它们不支持数据挖掘所需的数学运算。同态和顺序保留加密提供了一种潜在的解决方案。针对数据集群的现有工作表明,使用此类方案可提供安全的数据挖掘。但是,迄今为止,所有提议的方法都需要一定程度的数据所有者参与,在许多情况下,参与的数量是巨大的。本文提出了一种不需要任何数据所有者参与(一旦数据已加密)的安全数据集群方法。该方法使用加密距离矩阵(EDM)的思想进行操作,出于说明目的,该思想已嵌入到安全第三方数据聚类的方法中-安全最近邻聚类(SNNC)方法,该方法使用顺序保留和同构加密。 EDM概念和SNNC方法都得到了充分描述。

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