Authors
Shiwei Lan, Vasileios Stathopoulos, Babak Shahbaba, Mark Girolami
Publication date
2015/4/3
Journal
Journal of Computational and Graphical Statistics
Volume
24
Issue
2
Pages
357-378
Publisher
Taylor & Francis
Description
Hamiltonian Monte Carlo (HMC) improves the computational efficiency of the Metropolis–Hastings algorithm by reducing its random walk behavior. Riemannian HMC (RHMC) further improves the performance of HMC by exploiting the geometric properties of the parameter space. However, the geometric integrator used for RHMC involves implicit equations that require fixed-point iterations. In some cases, the computational overhead for solving implicit equations undermines RHMC’s benefits. In an attempt to circumvent this problem, we propose an explicit integrator that replaces the momentum variable in RHMC by velocity. We show that the resulting transformation is equivalent to transforming Riemannian Hamiltonian dynamics to Lagrangian dynamics. Experimental results suggest that our method improves RHMC’s overall computational efficiency in the cases considered. All computer programs and datasets are …
Total citations
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Scholar articles
S Lan, V Stathopoulos, B Shahbaba, M Girolami - Journal of Computational and Graphical Statistics, 2015