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k-anonymous microaggregation with preservation of statistical dependence

机译:k-匿名微聚集,保持统计依赖性

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摘要

\u1d458�������-Anonymous microaggregation emerges as an essential building block in statistical disclosure control, a field concerning the postprocessing of the demographic portion of surveys containing sensitive information, in order to safeguard the anonymity of the respondents. Traditionally, this form of microaggregation has been formulated to characterize both the privacy attained and the inherent information loss due to the aggregation of quasi-identifiers, which may otherwise be exploited to reidentify the individuals to which a record in a published database refer.\udBecause the ulterior purposes of such databases involves the analysis of the statistical dependence between demographic attributes and sensitive data, we must articulate mechanisms to enable the preservation of the statistical dependence between quasi-identifiers and confidential attributes, beyond the mere degradation of the quasi-identifiers alone.\udThis work addresses the problem of \u1d458�������\u1d458�������-anonymous microaggregation with preservation of statistical dependence in a formal, systematic manner, modeling statistical dependence as predictability of the confidential attributes from the perturbed quasi-identifiers. We proceed by introducing a second mean squared error term in a combined Lagrangian cost that enables us to regulate the trade-off between quasi-identifier distortion and the confidential-attribute predictability. A Lagrangian multiplier enables us to gracefully weigh the importance of each of the two competing objectives.
机译:\u1d458��������-匿名微聚合成为统计信息披露控制中的重要组成部分,这是一个涉及对包含敏感信息的调查的人口统计部分进行后处理的领域,目的是保护受访者的匿名性。传统上,这种微聚集形式已被用来描述由于准标识符的聚集而导致的隐私和固有信息丢失的特征,否则可以利用它们来重新标识已发布数据库中记录所引用的个人。这种数据库的最终目的涉及分析人口统计属性和敏感数据之间的统计依赖性,我们必须阐明机制,以保持准标识符和机密属性之间的统计依赖性,而不仅仅是仅对准标识符进行退化。\ ud这项工作解决了\u1d458�������\u1d458��������。来自扰动的准标识符。我们通过在拉格朗日组合成本中引入第二个均方误差项,使我们能够调节准标识符失真与机密属性可预测性之间的权衡。拉格朗日乘数使我们能够权衡两个竞争目标中每个目标的重要性。

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