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Computational improvements in parallelized k-anonymous microaggregation of large databases

机译:并行化k-匿名微识别大型数据库的计算改进

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The technical contents of this paper fall within the field of statistical disclosure control (SDC), which concerns the postprocessing of the demographic portion of the statistical results of surveys containing sensitive personal information, in order to effectively safeguard the anonymity of the participating respondents. The concrete purpose of this study is to improve the efficiency of a widely used algorithm for k-anonymous microaggregation, known as maximum distance to average vector (MDAV), to vastly accelerate its execution without affecting its excellent functional performance with respect to competing methods. The improvements put forth in this paper encompass algebraic modifications and the use of the basic linear algebra subprograms (BLAS) library, for the efficient parallel computation of MDAV on CPU.
机译:本文的技术内容属于统计披露控制(SDC)领域,涉及涵盖含有敏感个人信息的调查统计结果的人口统计部分的后处理,以便有效保护参与受访者的匿名性。本研究的具体目的是提高k-匿名微识别的广泛使用算法的效率,称为与平均向量(MDAV)的最大距离,以大大加速其执行而不影响其相对于竞争方法的优异功能性能。本文提出的改进包括代数修改和基本线性代数子程序(BLAS)库的使用,用于CPU上的MDAV的有效并行计算。

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