Comparison of machine learning models applied on anonymized data with different techniques

Judith Sáinz-Pardo Díaz, Á. García
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Abstract

Anonymization techniques based on obfuscating the quasi-identifiers by means of value generalization hierarchies are widely used to achieve preset levels of privacy. To prevent different types of attacks against database privacy it is necessary to apply several anonymization techniques beyond the classical k-anonymity or l-diversity. However, the application of these methods is directly connected to a reduction of their utility in prediction and decision making tasks. In this work we study four classical machine learning methods currently used for classification purposes in order to analyze the results as a function of the anonymization techniques applied and the parameters selected for each of them. The performance of these models is studied when varying the value of $k$ for k-anonymity and additional tools such as ${\ell}-diversity$, t-closeness and ${\delta}-disclosure\ privacy$ are also deployed on the well-known adult dataset.
不同技术在匿名数据上的机器学习模型比较
基于价值泛化层次模糊准标识符的匿名化技术被广泛用于实现预设的隐私级别。为了防止针对数据库隐私的不同类型的攻击,有必要在经典的k-匿名或l-多样性之外应用几种匿名化技术。然而,这些方法的应用直接关系到它们在预测和决策任务中的效用的减少。在这项工作中,我们研究了目前用于分类目的的四种经典机器学习方法,以便分析结果作为所应用的匿名化技术的函数以及为每种技术选择的参数。研究了这些模型在改变k匿名值时的性能,并在众所周知的成人数据集上部署了额外的工具,如${\ well}-diversity$、t-close $和${\delta}-disclosure\ privacy$。
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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