Epistemic Parity: Reproducibility as an Evaluation Metric for Differential Privacy

Author:

Rosenblatt Lucas1,Herman Bernease2,Holovenko Anastasia3,Lee Wonkwon1,Loftus Joshua4,McKinnie Elizabeth5,Rumezhak Taras3,Stadnik Andrii3,Howe Bill2,Stoyanovich Julia1

Affiliation:

1. New York University, New York, NY, USA

2. University of Washington, Seattle, WA, USA

3. Ukrainian Catholic University, Lviv, Ukraine

4. London School of Economics, London, UK

5. Microsoft, Seattle, WA, USA

Abstract

Differential privacy (DP) data synthesizers are increasingly proposed to afford public release of sensitive information, offering theoretical guarantees for privacy (and, in some cases, utility), but limited empirical evidence of utility in practical settings. Utility is typically measured as the error on representative proxy tasks, such as descriptive statistics, multivariate correlations, the accuracy of trained classifiers, or performance over a query workload. The ability for these results to generalize to practitioners' experience has been questioned in a number of settings, including the U.S. Census. In this paper, we propose an evaluation methodology for synthetic data that avoids assumptions about the representativeness of proxy tasks, instead measuring the likelihood that published conclusions would change had the authors used synthetic data, a condition we call epistemic parity. Our methodology consists of reproducing empirical conclusions of peer-reviewed papers on real, publicly available data, then re-running these experiments a second time on DP synthetic data and comparing the results. We instantiate our methodology over a benchmark of recent peer-reviewed papers that analyze public datasets in the ICPSR social science repository. We model quantitative claims computationally to automate the experimental workflow, and model qualitative claims by reproducing visualizations and comparing the results manually. We then generate DP synthetic datasets using multiple state-of-the-art mechanisms, and estimate the likelihood that these conclusions will hold. We find that, for reasonable privacy regimes, state-of-the-art DP synthesizers are able to achieve high epistemic parity for several papers in our benchmark. However, some papers, and particularly some specific findings, are difficult to reproduce for any of the synthesizers. Given these results, we advocate for a new class of mechanisms that can reorder the priorities for DP data synthesis: favor stronger guarantees for utility (as measured by epistemic parity) and offer privacy protection with a focus on application-specific threat models and risk-assessment.

Publisher

Association for Computing Machinery (ACM)

Subject

General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development

Reference63 articles.

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4. Eugene Bagdasaryan , Omid Poursaeed , and Vitaly Shmatikov . 2019. Differential privacy has disparate impact on model accuracy. Advances in neural information processing systems 32 ( 2019 ). Eugene Bagdasaryan, Omid Poursaeed, and Vitaly Shmatikov. 2019. Differential privacy has disparate impact on model accuracy. Advances in neural information processing systems 32 (2019).

5. Monya Baker . 2016. 1,500 scientists lift the lid on reproducibility. Nature 533, 7604 ( 2016 ). Monya Baker. 2016. 1,500 scientists lift the lid on reproducibility. Nature 533, 7604 (2016).

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