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Poster

Near-optimal algorithms for private estimation and sequential testing of collision probability

Danqi Liao · Lynn Chua


Abstract: We present new algorithms for estimating and testing \emph{collision probability}, a fundamental measure of the spread of a discrete distribution that is widely used in many scientific fields. We describe an algorithm that satisfies (α,β)-local differential privacy and estimates collision probability with error at most ϵ using ~O(log(1/β)α2ϵ2) samples for α1, which improves over previous work by a factor of 1α2. We also present a sequential testing algorithm for collision probability, which can distinguish between collision probability values that are separated by ϵ using ~O(1ϵ2) samples, even when ϵ is unknown. Our algorithms have nearly the optimal sample complexity, and in experiments we show that they require significantly fewer samples than previous methods.

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