Query-Efficient Locally Private Hypothesis Selection via the Scheffe Graph
Abstract
We propose an algorithm with improved query-complexity for the problem of hypothesis selection under local differential privacy constraints. Given a set of k probability distributions Q, we describe an algorithm that satisfies local differential privacy, performs O(k3/2) non-adaptive queries to individuals who each have samples from a probability distribution p, and outputs a probability distribution from the set Q which is nearly the closest to p. Previous algorithms required either (k2) queries or many rounds of interactive queries. Technically, we introduce a new object we dub the Scheff\'e graph, which captures structure of the differences between distributions in Q, and may be of more broad interest for hypothesis selection tasks.
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