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A Methodology to Compare Anonymization Methods Regarding Their Risk-Utility Trade-off

机译:比较匿名方法在风险与效用之间权衡的方法

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We present here a methodology to compare statistical disclosure control methods for microdata in terms of how they perform regarding the risk-utility trade-off. Previous comparative studies (e.g.) usually start by selecting some parameter values for a set of SDC methods and evaluate the disclosure risk and the information loss yielded by the methods for those parameterizations. In contrast, here we start by setting a certain risk level (resp. utility preservation level) and then we find which parameter values are needed to attain that risk (resp. utility) under different SDC methods; finally, once we have achieved an equivalent risk (resp. utility) level across methods, we evaluate the utility (resp. the risk) provided by each method, in order to rank methods according to their utility preservation (resp. disclosure protection), given a certain level of risk (resp. utility) and a certain original data set. The novelty of this comparison is not limited to the above-described methodology: we also justify and use general utility and risk measures that differ from those used in previous comparisons. Furthermore, we present experimental results of our methodology when used to compare the utility preservation of several methods given an equivalent level of risk for all of them.
机译:我们在这里提出了一种方法,用于比较微数据的统计披露控制方法在它们关于风险-效用折衷方面的执行情况。以前的比较研究(例如)通常从为一组SDC方法选择一些参数值开始,并评估这些参数化方法所产生的披露风险和信息损失。相反,这里我们首先设置一个特定的风险级别(实用程序保留级别),然后找到在不同的SDC方法下达到该风险所需的参数值(实用程序保留)。最后,一旦我们在各个方法上都达到了同等的风险(重新使用效用)水平,我们便会评估每种方法提供的效用(重新使用风险),以便根据方法的效用保留(重新发布保护)对方法进行排名,给定一定程度的风险(分别为实用程序)和一定的原始数据集。这种比较的新颖性不仅限于上述方法:我们还证明并使用不同于先前比较中使用的一般效用和风险度量。此外,当比较所有方法的效用保持相同的风险水平时,我们提供了本方法学的实验结果。

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