Freedom of Information and Personal Confidentiality in Spatial COVID-19 Data

IF 0.5 4区 数学 Q4 SOCIAL SCIENCES, MATHEMATICAL METHODS
M. Beenstock, D. Felsenstein
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引用次数: 3

Abstract

Abstract We draw attention to how, in the name of protecting the confidentiality of personal data, national statistical agencies have limited public access to spatial data on COVID-19. We also draw attention to large disparities in the way that access has been limited. In doing so, we distinguish between absolute confidentiality in which the probability of detection is 1, relative confidentiality where this probability is less than 1, and collective confidentiality, which refers to the probability of detection of at least one person. In spatial data, the probability of personal detection is less than 1, and the probability of collective detection varies directly with this probability and COVID-19 morbidity. Statistical agencies have been concerned with relative and collective confidentiality, which they implement using the techniques of truncation, where spatial data are not made public for zones with small populations, and censoring, where exact data are not made public for zones where morbidity is small. Granular spatial data are essential for epidemiological research into COVID-19. We argue that in their reluctance to make these data available to the public, data security officers (DSO) have unreasonably prioritized data protection over freedom of information. We also argue that by attaching importance to relative and collective confidentiality, they have over-indulged in data truncation and censoring. We highlight the need for legislation concerning relative and collective confidentiality, and regulation of DSO practices regarding data truncation and censoring.
COVID-19空间数据中的信息自由和个人保密
摘要我们提请注意,在保护个人数据机密性的名义下,国家统计机构如何限制公众获取新冠肺炎空间数据。我们还提请注意在准入受到限制方面存在的巨大差异。在这样做的过程中,我们区分了绝对机密性和集体机密性,其中绝对机密性是检测概率为1,相对机密性是该概率小于1,集体机密性是指检测到至少一个人的概率。在空间数据中,个人检测的概率小于1,集体检测的概率与该概率和新冠肺炎发病率直接相关。统计机构一直关注相对和集体的保密性,他们使用截断技术来实现这一点,在截断技术中,人口较少地区的空间数据不公开;在审查技术中,发病率较低地区的确切数据不公开。精细的空间数据对于新冠肺炎的流行病学研究至关重要。我们认为,由于数据安全官员不愿向公众提供这些数据,他们不合理地将数据保护置于信息自由之上。我们还认为,由于重视相对和集体保密,他们过度沉迷于数据截断和审查。我们强调需要制定有关相对和集体保密的立法,并监管DSO在数据截断和审查方面的做法。
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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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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