Faster Differentially Private Samplers via Rรฉnyi Divergence Analysis of Discretized Langevin MCMC

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Authors Arun Ganesh, Kunal Talwar arXiv ID 2010.14658 Category cs.LG: Machine Learning Cross-listed cs.CR, cs.DS, math.PR Citations 42 Venue Neural Information Processing Systems Last Checked 3 months ago
Abstract
Various differentially private algorithms instantiate the exponential mechanism, and require sampling from the distribution $\exp(-f)$ for a suitable function $f$. When the domain of the distribution is high-dimensional, this sampling can be computationally challenging. Using heuristic sampling schemes such as Gibbs sampling does not necessarily lead to provable privacy. When $f$ is convex, techniques from log-concave sampling lead to polynomial-time algorithms, albeit with large polynomials. Langevin dynamics-based algorithms offer much faster alternatives under some distance measures such as statistical distance. In this work, we establish rapid convergence for these algorithms under distance measures more suitable for differential privacy. For smooth, strongly-convex $f$, we give the first results proving convergence in Rรฉnyi divergence. This gives us fast differentially private algorithms for such $f$. Our techniques and simple and generic and apply also to underdamped Langevin dynamics.
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