Generalized PTR: User-Friendly Recipes for Data-Adaptive Algorithms with Differential Privacy

12/31/2022
by   Rachel Redberg, et al.
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The ”Propose-Test-Release” (PTR) framework is a classic recipe for designing differentially private (DP) algorithms that are data-adaptive, i.e. those that add less noise when the input dataset is nice. We extend PTR to a more general setting by privately testing data-dependent privacy losses rather than local sensitivity, hence making it applicable beyond the standard noise-adding mechanisms, e.g. to queries with unbounded or undefined sensitivity. We demonstrate the versatility of generalized PTR using private linear regression as a case study. Additionally, we apply our algorithm to solve an open problem from ”Private Aggregation of Teacher Ensembles (PATE)” – privately releasing the entire model with a delicate data-dependent analysis.

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