Incompatibilities Between Current Practices in Statistical Data Analysis and Differential Privacy
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Abstract
The authors discuss their experience applying differential privacy with a complex data set with the goal of enabling standard approaches to statistical data analysis. They highlight lessons learned and roadblocks encountered, distilling them into incompatibilities between current practices in statistical data analysis and differential privacy that go beyond issues which can be solved with a noisy measurements file. The authors discuss how overcoming these incompatibilities require compromise and a change in either our approach to statistical data analysis or differential privacy that should be addressed head-on.
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Funding data
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Alfred P. Sloan Foundation
Grant numbers G-2020-14024 -
National Center for Science and Engineering Statistics
Grant numbers 49100420C0002;;49100422C0008;49100420C0002