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Hiding Classification Rules for Data Sharing with Privacy Preservation

机译:隐藏带有隐私保存的数据共享的分类规则

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摘要

In this paper, we propose a method of hiding sensitive classification rules from data mining algorithms for categorical datasets. Our approach is to reconstruct a dataset according to the classification rules that have been checked and agreed by the data owner for releasing to data sharing. Unlike the other heuristic modification approaches, firstly, our method classifies a given dataset. Subsequently, a set of classification rules is shown to the data owner to identify the sensitive rules that should be hidden. After that we build a new decision tree that is constituted only non-sensitive rules. Finally, a new dataset is reconstructed. Our experiments show that the sensitive rules can be hidden completely on the reconstructed datasets. While non-sensitive rules are still able to discovered without any side effect. Moreover, our method can also preserve high usability of reconstructed datasets.
机译:在本文中,我们提出了一种从分类数据集的数据挖掘算法隐藏敏感分类规则的方法。我们的方法是根据数据所有者被检查和同意的分类规则重建数据集以释放数据共享。与其他启发式修改方法不同,我们的方法对给定的数据集进行分类。随后,向数据所有者显示一组分类规则以识别应该隐藏的敏感规则。之后,我们构建一个新的决策树,该树仅构成了非敏感规则。最后,重建了一个新的数据集。我们的实验表明,可以在重建的数据集中完全隐藏敏感规则。虽然不敏感的规则仍然能够发现没有任何副作用。此外,我们的方法还可以保持重建数据集的高可用性。

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