Energy cost and accuracy impact of k-anonymity

Ana Oprescu, Sander Misdorp, Koen van Elsen
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引用次数: 2

Abstract

European Union has aggregated the current societal concerns into two seemingly orthogonal directions: the Green Deal and the GDPR. In this paper, we begin to analyse trade-offs in preserving privacy, learning from the data, and saving energy. Considerable research studied the energy efficiency of software and the accuracy of machine learning models trained on anonymised datasets. However, to the best of our knowledge, no research has been conducted on the impact of anonymisation techniques on energy consumption. We measure the impact of anonymisation on the energy consumption and on the accuracy of machine learning models.We find that the k-value has a statistically significant impact on the energy consumption of the chosen anonymization algorithms. In terms of the accuracy of machine learning models, the generalization and suppression performs better in almost all cases, provided that proper anonymization hierarchies are used in the anonymization process. However, we find that for the larger and more complex dataset, the reduction in accuracy is limited while there is a significant difference in energy consumption. Thus when considering energy consumption we conclude that for larger datasets it might be worthwhile to consider using microaggregation over generalization and suppression.
k-匿名的能量成本和准确性影响
欧盟(eu)将当前社会关注的问题集中到两个看似正交的方向:绿色协议(Green Deal)和GDPR。在本文中,我们开始分析在保护隐私,从数据中学习和节约能源方面的权衡。相当多的研究研究了软件的能效和匿名数据集训练的机器学习模型的准确性。然而,据我们所知,还没有对匿名技术对能源消耗的影响进行过研究。我们测量了匿名化对能源消耗和机器学习模型准确性的影响。我们发现k值对所选择的匿名化算法的能耗有统计上显著的影响。就机器学习模型的准确性而言,如果在匿名化过程中使用适当的匿名化层次结构,那么在几乎所有情况下,泛化和抑制都表现得更好。然而,我们发现,对于更大和更复杂的数据集,准确性的降低是有限的,而能量消耗存在显着差异。因此,当考虑能量消耗时,我们得出结论,对于更大的数据集,考虑使用微聚合而不是泛化和抑制可能是值得的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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