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Rapid Mixing of Hamiltonian Monte Carlo on Strongly Log-Concave Distributions

23 August 2017
Oren Mangoubi
Aaron Smith
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Abstract

We obtain several quantitative bounds on the mixing properties of the Hamiltonian Monte Carlo (HMC) algorithm for a strongly log-concave target distribution π\piπ on Rd\mathbb{R}^{d}Rd, showing that HMC mixes quickly in this setting. One of our main results is a dimension-free bound on the mixing of an "ideal" HMC chain, which is used to show that the usual leapfrog implementation of HMC can sample from π\piπ using only O(d14)\mathcal{O}(d^{\frac{1}{4}})O(d41​) gradient evaluations. This dependence on dimension is sharp, and our results significantly extend and improve previous quantitative bounds on the mixing of HMC.

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