数据库重建不是那么容易,它不同于重新识别

IF 0.5 4区 数学 Q4 SOCIAL SCIENCES, MATHEMATICAL METHODS Journal of Official Statistics Pub Date : 2023-09-01 DOI:10.2478/jos-2023-0017
Krishnamurty Muralidhar, Josep Domingo-Ferrer
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引用次数: 1

摘要

近年来,有一种观点认为,在数据库中发布准确的统计信息有可能使数据库完全重建。差分隐私被认为是防止这些攻击的适当方法。最近,美国人口普查局非常重视这些说法,并导致他们在发布美国人口普查数据时采用差异隐私。由于受保护的产出缺乏准确性,这又引起了人口普查数据用户的恐慌。该公司还对美国商务部提起了法律诉讼。在本文中,我们追溯了在数据库上自动发布信息使其容易受到重构攻击暴露的说法的起源,并表明这种说法实际上是不正确的。我们还表明,通过正确使用传统的统计披露控制(SDC)技术可以避免重建。我们进一步表明,与实际采用的SDC方法相比,发布确切计数的地理水平与保护更相关。最后,我们警告不要混淆重建和再识别:使用重建质量作为再识别的度量会导致夸大的再识别风险数字。
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Database Reconstruction Is Not So Easy and Is Different from Reidentification
Abstract In recent years, it has been claimed that releasing accurate statistical information on a database is likely to allow its complete reconstruction. Differential privacy has been suggested as the appropriate methodology to prevent these attacks. These claims have recently been taken very seriously by the U.S. Census Bureau and led them to adopt differential privacy for releasing U.S. Census data. This in turn has caused consternation among users of the Census data due to the lack of accuracy of the protected outputs. It has also brought legal action against the U.S. Department of Commerce. In this article, we trace the origins of the claim that releasing information on a database automatically makes it vulnerable to being exposed by reconstruction attacks and we show that this claim is, in fact, incorrect. We also show that reconstruction can be averted by properly using traditional statistical disclosure control (SDC) techniques. We further show that the geographic level at which exact counts are released is even more relevant to protection than the actual SDC method employed. Finally, we caution against confusing reconstruction and reidentification: using the quality of reconstruction as a metric of reidentification results in exaggerated reidentification risk figures.
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来源期刊
Journal of Official Statistics
Journal of Official Statistics STATISTICS & PROBABILITY-
CiteScore
1.90
自引率
9.10%
发文量
39
审稿时长
>12 weeks
期刊介绍: JOS is an international quarterly published by Statistics Sweden. We publish research articles in the area of survey and statistical methodology and policy matters facing national statistical offices and other producers of statistics. The intended readers are researchers or practicians at statistical agencies or in universities and private organizations dealing with problems which concern aspects of production of official statistics.
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