首页> 外文会议>SIAM International Conference on Data Mining >Towards Breaking the Curse of Dimensionality for High-Dimensional Privacy
【24h】

Towards Breaking the Curse of Dimensionality for High-Dimensional Privacy

机译:为了打破高维隐私的维度诅咒

获取原文

摘要

The curse of dimensionality has remained a challenge for a wide variety of algorithms in data mining, clustering, classification and privacy. Recently, it was shown that an increasing dimensionality makes the data resistant to effective privacy. The theoretical results seem to suggest that the dimensionality curse is a fundamental barrier to privacy preservation. However, in practice, we show that some of the common properties of real data can be leveraged in order to greatly ameliorate the negative effects of the curse of dimensionality. In real data sets, many dimensions contain high levels of inter-attribute correlations. Such correlations enable the use of a process known as vertical fragmentation in order to decompose the data into vertical subsets of smaller dimensionality. An information-theoretic criterion of mutual information is used in the vertical decomposition process. This allows the use of an anonymization process, which is based on combining results from multiple independent fragments. We present a general approach which can be applied to the k-anonymity, l-diversity, and t-closeness models. In the presence of inter-attribute correlations, such an approach continues to be much more robust in higher dimensionality, without losing accuracy. We present experimental results illustrating the effectiveness of the approach. This approach is resilient enough to prevent identity, attribute, and membership disclosure attack.
机译:维度的诅咒对数据挖掘,聚类,分类和隐私中的各种算法仍然存在挑战。最近,表明增加的维度增加了对有效隐私的数据。理论结果似乎表明,维度诅咒是隐私保护的基本障碍。然而,在实践中,我们发现一些真实数据的共同属性可以为了被利用来大大改善维数灾难的负面影响。在实际数据集中,许多尺寸包含高水平的属性间相关性。这种相关性使得能够使用称为垂直碎片的过程,以便将数据分解为较小维度的垂直子集。在垂直分解过程中使用相互信息的信息 - 理论理标准。这允许使用匿名化进程,这是基于来自多个独立碎片的组合结果。我们介绍了一种可以应用于K-Anonymity,L-多样性和T次闭合模型的一般方法。在属性间相关性存在下,这种方法在更高的维度中继续更加稳健,而不会降低精度。我们呈现了说明该方法的有效性的实验结果。这种方法足以阻止身份,属性和会员披露攻击。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号