Conditional Monte Carlo for Reaction Networks

06/12/2019
by   David F. Anderson, et al.
0

Reaction networks are often used to model interacting species in fields such as biochemistry and ecology. When the counts of the species are sufficiently large, the dynamics of their concentrations are typically modeled via a system of differential equations. However, when the counts of some species are small, the dynamics of the counts are typically modeled stochastically via a discrete state, continuous time Markov chain. A key quantity of interest for such models is the probability mass function of the process at some fixed time. Since paths of such models are relatively straightforward to simulate, we can estimate the probabilities by constructing an empirical distribution. However, the support of the distribution is often diffuse across a high-dimensional state space, where the dimension is equal to the number of species. Therefore generating an accurate empirical distribution can come with a large computational cost. We present a new Monte Carlo estimator that fundamentally improves on the "classical" Monte Carlo estimator described above. It also preserves much of classical Monte Carlo's simplicity. The idea is basically one of conditional Monte Carlo. Our conditional Monte Carlo estimator has two parameters, and their choice critically affects the performance of the algorithm. Hence, a key contribution of the present work is that we demonstrate how to approximate optimal values for these parameters in an efficient manner. Moreover, we provide a central limit theorem for our estimator, which leads to approximate confidence intervals for its error.

READ FULL TEXT
research
08/24/2017

Randomized Dimension Reduction for Monte Carlo Simulations

We present a new unbiased algorithm that estimates the expected value of...
research
05/04/2020

Connecting the Dots: Towards Continuous Time Hamiltonian Monte Carlo

Continuous time Hamiltonian Monte Carlo is introduced, as a powerful alt...
research
10/11/2019

Regeneration-enriched Markov processes with application to Monte Carlo

We study a class of Markov processes comprising local dynamics governed ...
research
04/26/2019

New visualizations for Monte Carlo simulations

In Monte Carlo simulations, samples are obtained from a target distribut...
research
03/17/2022

Covid19 Reproduction Number: Credibility Intervals by Blockwise Proximal Monte Carlo Samplers

Monitoring the Covid19 pandemic constitutes a critical societal stake th...
research
10/04/2018

Monte Carlo Dependency Estimation

Estimating the dependency of variables is a fundamental task in data ana...
research
05/12/2017

Exploiting network topology for large-scale inference of nonlinear reaction models

The development of chemical reaction models aids system design and optim...

Please sign up or login with your details

Forgot password? Click here to reset