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Scalability and Performance of the Privacy-Aware Classification Method GenPAC

机译:隐私感知分类方法GenPac的可扩展性和性能

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In this work we evaluate the scalability and performance of our previously presented GenPAC method by applying it on larger datasets. The work is motivated by the necessity of meeting privacy constraints when focusing on the importance and broad application of data mining but also by the growing demand for privacy preservation in general. GenPAC, which can be used with any standard classification method, relies on clustering data to obfuscate information. The method is particularly useful in multi-party data mining scenarios where privacy is of interest. Its application has only minor impact on the classification performance of the used underlying data mining method whilst privacy preservation can be provided at the cost of a higher execution time. In this regard, empirical analysis and evaluation have been conducted. The corresponding results are presented, analyzed and discussed with respect to their classification performance and execution time showing a high scalability in regard to the size of the dataset and the number of participating parties.
机译:在这项工作中,我们通过将其应用于较大的数据集来评估先前呈现的GenPAC方法的可扩展性和性能。在重点关注数据挖掘的重要性和广泛应用时,这项工作是通过满足隐私约束的必要性,而且通过越来越多的隐私保存需求,普遍存在。 GenPAC可以与任何标准分类方法一起使用,依赖于聚类数据以使信息进行混淆。该方法在隐私感兴趣的多方数据挖掘方案中特别有用。其应用仅对底层数据挖掘方法的分类性能进行了微小的影响,而可以以更高的执行时间的成本提供隐私保存。在这方面,已经进行了实证分析和评估。呈现了相应的结果,分析和讨论了它们的分类性能和执行时间,在数据集的大小和参与方的数量方面显示出高可伸缩性和执行时间。

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