Publication | Open Access
Sampling with Riemannian Hamiltonian Monte Carlo in a Constrained Space
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2022
Year
Constrained SpaceComputational ScienceHamiltonian Monte CarloEngineeringMachine LearningData ScienceMonte CarloMonte Carlo MethodComputational BiologyStatistical InferenceProbability TheoryComputer ScienceConstrained DistributionsBiological ComputationMarkov Chain Monte CarloCobra ToolboxSequential Monte CarloMonte Carlo Sampling
We demonstrate for the first time that ill-conditioned, non-smooth, constrained distributions in very high dimension, upwards of 100,000, can be sampled efficiently $\textit{in practice}$. Our algorithm incorporates constraints into the Riemannian version of Hamiltonian Monte Carlo and maintains sparsity. This allows us to achieve a mixing rate independent of smoothness and condition numbers. On benchmark data sets in systems biology and linear programming, our algorithm outperforms existing packages by orders of magnitude. In particular, we achieve a 1,000-fold speed-up for sampling from the largest published human metabolic network (RECON3D). Our package has been incorporated into the COBRA toolbox.