Differentially Private Set Representations

We study the problem of differentially private (DP) mechanisms for representing sets of size from a large universe. Our first construction creates -DP representations with error probability of using space at most bits where the time to construct a representation is while decoding time is . We also present a second algorithm for pure -DP representations with the same error using space at most bits, but requiring large decoding times. Our algorithms match our lower bounds on privacy-utility trade-offs (including constants but ignoring factors) and we also present a new space lower bound matching our constructions up to small constant factors. To obtain our results, we design a new approach embedding sets into random linear systems deviating from most prior approaches that inject noise into non-private solutions.
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