Differential Perspectives: Epistemic Disconnects Surrounding the U.S. Census Bureau’s Use of Differential Privacy

Dan R. Boyd, Jayshree Sarathy
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引用次数: 20

Abstract

: When the U.S. Census Bureau announced its intention to modernize its disclosure avoidance procedures for the 2020 Census, it sparked a controversy that is still underway. The move to differential privacy introduced technical and procedural uncertainties, leaving stakeholders unable to evaluate the quality of the data. More importantly, this transformation exposed the statistical illusions and limitations of census data, weakening stakeholders’ trust in the data and in the Census Bureau itself. This essay examines the epistemic currents of this controversy. Drawing on theories from Science and Technology Studies (STS) and ethnographic fieldwork, we analyze the current controversy over differential privacy as a battle over uncertainty, trust, and legitimacy of the Census. We argue that rebuilding trust will require more than technical repairs or improved communication; it will require reconstructing what we identify as a ‘statistical imaginary.’
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差异视角:围绕美国人口普查局使用差异隐私的认知脱节
当前位置当美国人口普查局宣布其打算在2020年人口普查中现代化其信息披露避免程序时,它引发了一场仍在进行中的争议。差异化隐私的举措引入了技术和程序上的不确定性,使利益相关者无法评估数据的质量。更重要的是,这种转变暴露了人口普查数据的统计幻想和局限性,削弱了利益相关者对数据和人口普查局本身的信任。本文考察了这一争议的认知潮流。借鉴科学技术研究(STS)和民族志田野调查的理论,我们分析了目前关于差异隐私的争议,作为人口普查的不确定性,信任和合法性的斗争。我们认为,重建信任需要的不仅仅是技术修复或改善沟通;它需要重建我们称之为“统计想象”的东西。
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