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Element Level Differential Privacy: The Right Granularity of Privacy

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arxiv 1912.04042 v1 pith:6H7Q6TYK submitted 2019-12-05 cs.LG cs.CRstat.ML

Element Level Differential Privacy: The Right Granularity of Privacy

classification cs.LG cs.CRstat.ML
keywords privacydifferentialelementlearningseveralanalysisapplicationsgranularity
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Differential Privacy (DP) provides strong guarantees on the risk of compromising a user's data in statistical learning applications, though these strong protections make learning challenging and may be too stringent for some use cases. To address this, we propose element level differential privacy, which extends differential privacy to provide protection against leaking information about any particular "element" a user has, allowing better utility and more robust results than classical DP. By carefully choosing these "elements," it is possible to provide privacy protections at a desired granularity. We provide definitions, associated privacy guarantees, and analysis to identify the tradeoffs with the new definition; we also develop several private estimation and learning methodologies, providing careful examples for item frequency and M-estimation (empirical risk minimization) with concomitant privacy and utility analysis. We complement our theoretical and methodological advances with several real-world applications, estimating histograms and fitting several large-scale prediction models, including deep networks.

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    Local privacy mechanisms preserve rate-double-robustness, enabling unbiased and semiparametrically efficient inference on target parameters indexed linearly by infinite-dimensional and nonlinearly by low-dimensional c...