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Dynamically Rescaled Hamiltonian Monte Carlo for Bayesian Hierarchical Models
Authors:Tore Selland Kleppe
Affiliation:1. Department of Mathematics and Physics, University of Stavanger, Stavanger, Norwaytore.kleppe@uis.no
Abstract:Dynamically rescaled Hamiltonian Monte Carlo is introduced as a computationally fast and easily implemented method for performing full Bayesian analysis in hierarchical statistical models. The method relies on introducing a modified parameterization so that the reparameterized target distribution has close to constant scaling properties, and thus is easily sampled using standard (Euclidian metric) Hamiltonian Monte Carlo. Provided that the parameterizations of the conditional distributions specifying the hierarchical model are “constant information parameterizations” (CIPs), the relation between the modified- and original parameterization is bijective, explicitly computed, and admit exploitation of sparsity in the numerical linear algebra involved. CIPs for a large catalogue of statistical models are presented, and from the catalogue, it is clear that many CIPs are currently routinely used in statistical computing. A relation between the proposed methodology and a class of explicitly integrated Riemann manifold Hamiltonian Monte Carlo methods is discussed. The methodology is illustrated on several example models, including a model for inflation rates with multiple levels of nonlinearly dependent latent variables. Supplementary materials for this article are available online.
Keywords:Bayesian hierarchical models  Hamiltonian Monte Carlo  Markov chain Monte Carlo (MCMC)  Riemann manifold Hamiltonian Monte Carlo  Stan
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