TL;DR
This paper evaluates the effectiveness of parallel tempering in accelerating Bayesian parameter estimation for systems biology models, demonstrating improved convergence over traditional methods especially in complex scenarios.
Contribution
The study compares parallel tempering with Metropolis-Hastings for Bayesian parameter estimation and provides a new MATLAB tool integrated with BioNetGen.
Findings
Parallel tempering accelerates convergence for simpler models.
PT often outperforms MH in complex models by escaping local minima.
A new MATLAB package PTempEst is introduced for Bayesian estimation.
Abstract
Models of biological systems often have many unknown parameters that must be determined in order for model behavior to match experimental observations. Commonly-used methods for parameter estimation that return point estimates of the best-fit parameters are insufficient when models are high dimensional and under-constrained. As a result, Bayesian methods, which treat model parameters as random variables and attempt to estimate their probability distributions given data, have become popular in systems biology. Bayesian parameter estimation often relies on Markov Chain Monte Carlo (MCMC) methods to sample model parameter distributions, but the slow convergence of MCMC sampling can be a major bottleneck. One approach to improving performance is parallel tempering (PT), a physics-based method that uses swapping between multiple Markov chains run in parallel at different temperatures to…
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