An adaptive multi-level simulation algorithm for stochastic biological systems
Christopher Lester, Christian A. Yates, Michael B. Giles, Ruth E., Baker

TL;DR
This paper introduces an adaptive multi-level simulation algorithm for stochastic biological systems that improves efficiency by dynamically adjusting time steps based on system behavior, reducing bias and computational cost.
Contribution
The authors develop a novel adaptive time-stepping approach within the multi-level method, enhancing simulation accuracy and efficiency for systems with changing reaction activity.
Findings
Significant reduction in computational time compared to fixed tau methods
Maintains accuracy while adapting to system dynamics
Demonstrated efficiency improvements on biological examples
Abstract
Discrete-state, continuous-time Markov models are widely used in the modeling of biochemical reaction networks. Their complexity often precludes analytic solution, and we rely on stochastic simulation algorithms to estimate system statistics. The Gillespie algorithm is exact, but computationally costly as it simulates every single reaction. As such, approximate stochastic simulation algorithms such as the tau-leap algorithm are often used. Potentially computationally more efficient, the system statistics generated suffer from significant bias unless tau is relatively small, in which case the computational time can be comparable to that of the Gillespie algorithm. The multi-level method (Anderson and Higham, Multiscale Model. Simul. 2012) tackles this problem. A base estimator is computed using many (cheap) sample paths at low accuracy. The bias inherent in this estimator is then reduced…
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