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Nonlinear Hamiltonian Monte Carlo & its Particle Approximation

Abstract

We present a nonlinear (in the sense of McKean) generalization of Hamiltonian Monte Carlo (HMC) termed nonlinear HMC (nHMC) capable of sampling from nonlinear probability measures of mean-field type. When the underlying confinement potential is KK-strongly convex and LL-gradient Lipschitz, and the underlying interaction potential is gradient Lipschitz, nHMC can produce an ε\varepsilon-accurate approximation of a dd-dimensional nonlinear probability measure in L1L^1-Wasserstein distance using O((L/K)log(1/ε))O((L/K) \log(1/\varepsilon)) steps. Owing to a uniform-in-steps propagation of chaos phenomenon, and without further regularity assumptions, unadjusted HMC with randomized time integration for the corresponding particle approximation can achieve ε\varepsilon-accuracy in L1L^1-Wasserstein distance using O((L/K)5/3(d/K)4/3(1/ε)8/3log(1/ε))O( (L/K)^{5/3} (d/K)^{4/3} (1/\varepsilon)^{8/3} \log(1/\varepsilon) ) gradient evaluations. These mixing/complexity upper bounds are a specific case of more general results developed in the paper for a larger class of non-logconcave, nonlinear probability measures of mean-field type.

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