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Split Hamiltonian Monte Carlo revisited

15 July 2022
F. Casas
J. Sanz-Serna
Luke Shaw
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Abstract

We study Hamiltonian Monte Carlo (HMC) samplers based on splitting the Hamiltonian HHH as H0(θ,p)+U1(θ)H_0(\theta,p)+U_1(\theta)H0​(θ,p)+U1​(θ), where H0H_0H0​ is quadratic and U1U_1U1​ small. We show that, in general, such samplers suffer from stepsize stability restrictions similar to those of algorithms based on the standard leapfrog integrator. The restrictions may be circumvented by preconditioning the dynamics. Numerical experiments show that, when the H0(θ,p)+U1(θ)H_0(\theta,p)+U_1(\theta)H0​(θ,p)+U1​(θ) splitting is combined with preconditioning, it is possible to construct samplers far more efficient than standard leapfrog HMC.

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