Perturb-and-Project: Differentially Private Similarities and Marginals

We revisit the input perturbations framework for differential privacy where noise is added to the input and the result is then projected back to the space of admissible datasets . Through this framework, we first design novel efficient algorithms to privately release pair-wise cosine similarities. Second, we derive a novel algorithm to compute -way marginal queries over features. Prior work could achieve comparable guarantees only for even. Furthermore, we extend our results to -sparse datasets, where our efficient algorithms yields novel, stronger guarantees whenever Finally, we provide a theoretical perspective on why \textit{fast} input perturbation algorithms works well in practice. The key technical ingredients behind our results are tight sum-of-squares certificates upper bounding the Gaussian complexity of sets of solutions.
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