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arxiv: 1112.4118 · v1 · pith:ZXLYZQU3new · submitted 2011-12-18 · 📊 stat.ME · physics.data-an

The Geometry of Hamiltonian Monte Carlo

classification 📊 stat.ME physics.data-an
keywords carlohamiltonianmontechainchoicegeometrymarkovadmissible
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With its systematic exploration of probability distributions, Hamiltonian Monte Carlo is a potent Markov Chain Monte Carlo technique; it is an approach, however, ultimately contingent on the choice of a suitable Hamiltonian function. By examining both the symplectic geometry underlying Hamiltonian dynamics and the requirements of Markov Chain Monte Carlo, we construct the general form of admissible Hamiltonians and propose a particular choice with potential application in Bayesian inference.

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