模拟化学动力学的一种混合头跃方法及其在参数估计中的应用。

IF 2.9 3区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES Royal Society Open Science Pub Date : 2024-12-04 eCollection Date: 2024-12-01 DOI:10.1098/rsos.240157
Thomas Trigo Trindade, Konstantinos C Zygalakis
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引用次数: 0

摘要

我们考虑有效地模拟化学动力学随机模型的问题。这些模型通常采用Gillespie随机模拟算法(SSA)进行模拟;然而,在许多感兴趣的场景中,计算成本很快变得令人望而却步。当估计化学模型的参数时,这在贝叶斯推理的背景下进一步加剧,因为可能性的难解性需要对底层系统进行多次模拟。为了解决计算复杂性的问题,我们提出了一种新的混合τ-leap算法来模拟充分混合的化学系统。特别是,该算法在适当时(高人口密度)使用τ-leap,在必要时使用SSA(低人口密度,当离散效应变得不可忽略时)。在中间状态下,两种方法的结合,它使用了潜在泊松公式的性质,被采用。通过许多数值实验表明,与SSA相比,混合τ提供了显著的计算节省,但不会牺牲整体精度。这个特性在贝叶斯推理环境中特别受欢迎,因为它允许在减少计算成本的情况下对随机化学动力学进行参数估计。
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A hybrid tau-leap for simulating chemical kinetics with applications to parameter estimation.

We consider the problem of efficiently simulating stochastic models of chemical kinetics. The Gillespie stochastic simulation algorithm (SSA) is often used to simulate these models; however, in many scenarios of interest, the computational cost quickly becomes prohibitive. This is further exacerbated in the Bayesian inference context when estimating parameters of chemical models, as the intractability of the likelihood requires multiple simulations of the underlying system. To deal with issues of computational complexity in this paper, we propose a novel hybrid τ-leap algorithm for simulating well-mixed chemical systems. In particular, the algorithm uses τ-leap when appropriate (high population densities), and SSA when necessary (low population densities, when discrete effects become non-negligible). In the intermediate regime, a combination of the two methods, which uses the properties of the underlying Poisson formulation, is employed. As illustrated through a number of numerical experiments, the hybrid τ offers significant computational savings when compared with SSA without, however, sacrificing the overall accuracy. This feature is particularly welcomed in the Bayesian inference context, as it allows for parameter estimation of stochastic chemical kinetics at reduced computational cost.

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来源期刊
Royal Society Open Science
Royal Society Open Science Multidisciplinary-Multidisciplinary
CiteScore
6.00
自引率
0.00%
发文量
508
审稿时长
14 weeks
期刊介绍: Royal Society Open Science is a new open journal publishing high-quality original research across the entire range of science on the basis of objective peer-review. The journal covers the entire range of science and mathematics and will allow the Society to publish all the high-quality work it receives without the usual restrictions on scope, length or impact.
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