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Incremental Privacy Preservation for Associative Classification

机译:关联分类的增量隐私保护

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Privacy preserving has become an essential process for any data mining task. Therefore, data transformation to ensure privacy preservation is needed. In this paper, we address a problem of privacy preserving on an incremental-data scenario in which the data need to be transformed are not static, but appended all the time. Our work is based on a well-known data privacy model, i.e. k-Anonymity. Meanwhile the data mining task to be applied to the given dataset is associative classification. As the problem of privacy preserving for data mining has proven as an NP-hard, we propose to study the characteristics of a proven heuristic algorithm in the incremental scenarios theoretically. Subsequently, we propose a few observations which lead to the techniques to reduce the computational complexity for the problem setting in which the outputs remains the same. In addition, we propose a simple algorithm, which is at most as efficient as the polynomial-time heuristic algorithm in the worst case, for the problem.
机译:隐私保护已成为任何数据挖掘任务的基本过程。因此,需要进行数据转换以确保隐私保护。在本文中,我们解决了增量数据方案中的隐私保护问题,在这种方案中,需要转换的数据不是静态的,而是始终附加的。我们的工作基于众所周知的数据隐私模型,即k-匿名。同时,要应用于给定数据集的数据挖掘任务是关联分类。由于数据挖掘的隐私保护问题已被证明是NP难题,因此我们建议在增量方案中从理论上研究已证明的启发式算法的特征。随后,我们提出一些观察结果,这些观察结果导致降低输出保持不变的问题设置的计算复杂度的技术。另外,针对该问题,我们提出了一种简单的算法,该算法在最坏的情况下最多与多项式时间启发式算法一样有效。

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