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Private estimation algorithms for stochastic block models and mixture models

Neural Information Processing Systems (NeurIPS), 2023
Abstract

We introduce general tools for designing efficient private estimation algorithms, in the high-dimensional settings, whose statistical guarantees almost match those of the best known non-private algorithms. To illustrate our techniques, we consider two problems: recovery of stochastic block models and learning mixtures of spherical Gaussians. For the former, we present the first efficient (ϵ,δ)(\epsilon, \delta)-differentially private algorithm for both weak recovery and exact recovery. Previously known algorithms achieving comparable guarantees required quasi-polynomial time. For the latter, we design an (ϵ,δ)(\epsilon, \delta)-differentially private algorithm that recovers the centers of the kk-mixture when the minimum separation is at least $ O(k^{1/t}\sqrt{t})$. For all choices of tt, this algorithm requires sample complexity nkO(1)dO(t)n\geq k^{O(1)}d^{O(t)} and time complexity (nd)O(t)(nd)^{O(t)}. Prior work required minimum separation at least O(k)O(\sqrt{k}) as well as an explicit upper bound on the Euclidean norm of the centers.

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