基于隐私保护的分布式数据分类预测:一种新方法

M. Shah, Hiren D. Joshi
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引用次数: 0

摘要

隐私保护数据挖掘(PPDM)由于其固有的无所不在的普遍性,对每一个密切关注数据挖掘的研究人员来说都是一个迷人的优势。几年前,数据挖掘对任何领域都是必不可少的,至关重要的,现在保护隐私的数据挖掘的范围随着其适用性和有效性的推进而扩大。PPDM是一套解决方案,用于保护包含个人或私人信息的数据,以及此类信息的任何程度的泄漏都可能对个人或企业造成巨大且不可逆转的损失。与此同时,PPDM还关注不损害将参与挖掘的其他数据的效用。这两个方面之间的平衡:保密性和准确性需要一个智能的平衡解决方案。任何提出的算法都在几个方面有所不同,比如效率、准确性、数据传输成本、保密程度、速度等等。没有一种算法可以推广到优于其他算法。它们是特定于情况、领域和需求的。本文提出了一种基于PPDM后台框架的算法,在敏感的水平分区式分布式数据参与集体挖掘之前对其进行匿名化处理。我们已经尽力隐藏最大程度的个人信息,不让它影响到挖掘的结果。还应铭记的是,在整个过程中,数据传输仍然很少,而不会影响最终调查结果的质量。实验结果和分析也给出了详细的评价所提出的方法。在同一类型和环境中,较早的解决方案与现有解决方案在重要方面进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prognosis using distributed data classification with privacy preserving: A novel approach
Privacy preserving data mining (PPDM) is a captivating forte for every researcher who has been closely pursuing data mining, for its inherent nature of ubiquitous pervasiveness. As few years back, data mining was essential and vital to any sphere, so is the now the spectrum of privacy preserving data mining expanding with a thrust upon its applicability and efficacy. PPDM is a pool of solutions which takes care of shielding of data which has personal or private information and where any level of percolation of such information can be a cause of colossal and irreversible loss to an individual or business. At the same time, PPDM is also concerned with not compromising on the utility of other data which would be participating in mining. A balance between both the aspects: the secrecy and accuracy requires a smart balancing solution. Any algorithm suggested vary in several measures like efficiency, accuracy, data transfer costs, level of secrecy maintained, speed: to name a few. No algorithm is such that it can be generalized to perform superior to the rest. They are situation, domain and requirement specific. In this paper, an algorithm with a background framework for PPDM is proposed which anonymizes sensitive horizontal partitioned style distributed data, before they partake in collective mining process. Efforts have been made to conceal maximum personal information and not allowing it to affect on the results of mining. It is also kept in mind that the data transfer remains minimal during the entire process without distressing the quality of final findings. The experimental results and analysis is also presented for a detailed evaluation of the proposed method. An earlier solution in the same genre and environment is compared with the existing solution on important aspects.
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