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首页> 外文期刊>International Journal of Database Management Systems >Graph Based Local Recoding for Data Anonymization
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Graph Based Local Recoding for Data Anonymization

机译:基于图的本地重新编码以实现数据匿名化

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Releasing person specific data could potentially reveal the sensitive information of an individual. kanonymity is an approach for protecting the individual privacy where the data is formed into set of equivalence classes in which each class share the same values. Among several methods, local recoding based generalization is an effective method to accomplish k-anonymization. In this paper, we proposed a minimum spanning tree partitioning based approach to achieve local recoding. We achieve it in two phases. During the first phase, MST is constructed using concept hierarchical and the distances among data points are considered as the weights of MST and in the next phase we generate the equivalence classes adhering to the anonymity requirement. Experiments show that our proposed local recoding framework produces better quality in published tables than existing Mondrian global recoding and k-member clustering approaches.
机译:发布个人特定数据可能会泄露个人的敏感信息。匿名性是一种保护个人隐私的方法,其中将数据形成为一组等效类,其中每个类共享相同的值。在几种方法中,基于本地重新编码的泛化是完成k匿名化的有效方法。在本文中,我们提出了一种基于最小生成树分区的方法来实现本地重新编码。我们分两个阶段实现它。在第一阶段,MST是使用概念层次结构构造的,数据点之间的距离被视为MST的权重,在下一阶段,我们将生成符合匿名性要求的等价类。实验表明,与现有的Mondrian全局重新编码和k成员聚类方法相比,我们提出的本地重新编码框架在已发布的表格中产生更好的质量。

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