Title
Hamiltonian Monte Carlo methods for efficient parameter estimation in steady state dynamical systems.
Abstract
Parameter estimation for differential equation models of intracellular processes is a highly relevant bu challenging task. The available experimental data do not usually contain enough information to identify all parameters uniquely, resulting in ill-posed estimation problems with often highly correlated parameters. Sampling-based Bayesian statistical approaches are appropriate for tackling this problem. The samples are typically generated via Markov chain Monte Carlo, however such methods are computationally expensive and their convergence may be slow, especially if there are strong correlations between parameters. Monte Carlo methods based on Euclidean or Riemannian Hamiltonian dynamics have been shown to outperform other samplers by making proposal moves that take the local sensitivities of the system's states into account and accepting these moves with high probability. However, the high computational cost involved with calculating the Hamiltonian trajectories prevents their widespread use for all but the smallest differential equation models. The further development of efficient sampling algorithms is therefore an important step towards improving the statistical analysis of predictive models of intracellular processes.We show how state of the art Hamiltonian Monte Carlo methods may be significantly improved for steady state dynamical models. We present a novel approach for efficiently calculating the required geometric quantities by tracking steady states across the Hamiltonian trajectories using a Newton-Raphson method and employing local sensitivity information. Using our approach, we compare both Euclidean and Riemannian versions of Hamiltonian Monte Carlo on three models for intracellular processes with real data and demonstrate at least an order of magnitude improvement in the effective sampling speed. We further demonstrate the wider applicability of our approach to other gradient based MCMC methods, such as those based on Langevin diffusions.Our approach is strictly benefitial in all test cases. The Matlab sources implementing our MCMC methodology is available from https://github.com/a-kramer/ode_rmhmc.
Year
DOI
Venue
2014
10.1186/1471-2105-15-253
BMC Bioinformatics
Keywords
Field
DocType
algorithms,bioinformatics,markov chains,insulin,systems biology,microarrays,monte carlo method,phosphorylation,bayes theorem
Monte Carlo method in statistical physics,Monte Carlo method,Markov chain Monte Carlo,Computer science,Markov chain,Hybrid Monte Carlo,Bioinformatics,Monte Carlo molecular modeling,Quantum Monte Carlo,Gibbs sampling
Journal
Volume
Issue
ISSN
15
1
1471-2105
Citations 
PageRank 
References 
5
0.35
5
Authors
3
Name
Order
Citations
PageRank
Andrei Kramer1293.31
Ben Calderhead2989.08
Nicole Radde311111.79