Neural-network solutions to stochastic reaction networks
The stochastic reaction network in which chemical species evolve through a set of reactions is widely used to model stochastic processes in physics, chemistry and biology. To characterize the evolving joint probability distribution in the state space of species counts requires solving a system of or...
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Zusammenfassung: | The stochastic reaction network in which chemical species evolve through a
set of reactions is widely used to model stochastic processes in physics,
chemistry and biology. To characterize the evolving joint probability
distribution in the state space of species counts requires solving a system of
ordinary differential equations, the chemical master equation, where the size
of the counting state space increases exponentially with the type of species,
making it challenging to investigate the stochastic reaction network. Here, we
propose a machine-learning approach using the variational autoregressive
network to solve the chemical master equation. Training the autoregressive
network employs the policy gradient algorithm in the reinforcement learning
framework, which does not require any data simulated in prior by another
method. Different from simulating single trajectories, the approach tracks the
time evolution of the joint probability distribution, and supports direct
sampling of configurations and computing their normalized joint probabilities.
We apply the approach to representative examples in physics and biology, and
demonstrate that it accurately generates the probability distribution over
time. The variational autoregressive network exhibits a plasticity in
representing the multimodal distribution, cooperates with the conservation law,
enables time-dependent reaction rates, and is efficient for high-dimensional
reaction networks with allowing a flexible upper count limit. The results
suggest a general approach to investigate stochastic reaction networks based on
modern machine learning. |
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DOI: | 10.48550/arxiv.2210.01169 |