Jan. 1, 2023, midnight | Jakob Robnik, G. Bruno De Luca, Eva Silverstein, Uroš Seljak

JMLR www.jmlr.org

We develop Microcanonical Hamiltonian Monte Carlo (MCHMC), a class of models that follow fixed energy Hamiltonian dynamics, in contrast to Hamiltonian Monte Carlo (HMC), which follows canonical distribution with different energy levels. MCHMC tunes the Hamiltonian function such that the marginal of the uniform distribution on the constant-energy-surface over the momentum variables gives the desired target distribution. We show that MCHMC requires occasional energy-conserving billiard-like momentum bounces for ergodicity, analogous to momentum resampling in HMC. We generalize the concept of …

canonical contrast distribution dynamics energy function hamiltonian monte carlo surface uniform variables

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