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首页> 外文期刊>International Journal of Wavelets, Multiresolution and Information Processing >ON THE USE OF HAAR WAVELET TRANSFORM AND SCALING DATA PERTURBATION FOR PRIVACY PRESERVING CLUSTERING OF LARGE DATASETS
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ON THE USE OF HAAR WAVELET TRANSFORM AND SCALING DATA PERTURBATION FOR PRIVACY PRESERVING CLUSTERING OF LARGE DATASETS

机译:Haar小波变换和标度数据摄动在大数据集隐私保护聚类中的应用

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摘要

In recent years, data mining has raised some issues related to the privacy of individuals. Due to these issues, data owners abstain to share their sensitive information with data miners. Thus, privacy preserving data mining (PPDM) techniques have been introduced. One of these techniques is for data hiding purpose, which depending on the type of privacy problems can be categorized as follows: (1) Perturbation of the original sensitive data before delivering to the data miners and (2) anonymization of the entities before publishing the data. In this paper, we propose a new technique for privacy preserving clustering (PPC) over centralized databases that belongs to the first category. The proposed technique uses Haar wavelet transform and scaling data perturbation to provide both data hiding and data reduction to protect the underlying numerical attributes subjected to clustering analysis. We present extensive experimental results for the proposed technique. Our experimental evaluations demonstrated that the proposed technique is effective and find a good tradeoff between clustering quality, data privacy, and data reduction. We will present the results of the comparison of the proposed technique with other existing PPC techniques. We will also present a formal description of the proposed technique and its privacy analysis, which proves its security.
机译:近年来,数据挖掘引发了一些与个人隐私有关的问题。由于这些问题,数据所有者不愿与数据挖掘者共享其敏感信息。因此,已经引入了隐私保护数据挖掘(PPDM)技术。这些技术中的一种是出于数据隐藏目的,根据隐私问题的类型,可以将其分类如下:(1)在将原始敏感数据传递给数据挖掘者之前对其进行扰动,以及(2)在发布数据之前将实体匿名化数据。在本文中,我们提出了一种属于第一类的用于集中式数据库上的隐私保护群集(PPC)的新技术。所提出的技术使用Haar小波变换和缩放数据扰动来提供数据隐藏和数据归约,以保护进行聚类分析的基础数字属性。我们提出的技术广泛的实验结果。我们的实验评估表明,所提出的技术是有效的,并且在集群质量,数据隐私和数据缩减之间找到了很好的折衷。我们将介绍所提出的技术与其他现有的PPC技术的比较结果。我们还将对提出的技术及其隐私分析进行正式描述,以证明其安全性。

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