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Stochastic ordinary differential equations in applied and computational mathematics

机译:应用数学和计算数学中的随机常微分方程

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摘要

Using concrete examples, we discuss the current and potential use of stochastic ordinary differential equations (SDEs) from the perspective of applied and computational mathematics. Assuming only a minimal background knowledge in probability and stochastic processes, we focus on aspects that distinguish SDEs from their deterministic counterparts. To illustrate a multiscale modelling framework, we explain how SDEs arise naturally as diffusion limits in the type of discrete-valued stochastic models used in chemical kinetics, population dynamics and, most topically, systems biology. We outline some key issues in existence, uniqueness and stability that arise when SDEs are used as physical models and point out possible pitfalls. We also discuss the use of numerical methods to simulate trajectories of an SDE and explain how both weak and strong convergence properties are relevant for highly efficient multilevel Monte Carlo simulations. We flag up what we believe to be key topics for future research, focussing especially on non-linear models, parameter estimation, uncertainty quantification, model comparison and multiscale simulation.
机译:通过具体的例子,我们从应用数学和计算数学的角度讨论了随机常微分方程(SDE)的当前和潜在用途。假设概率和随机过程的背景知识最少,我们将重点放在将SDE与确定性对应物区分开的方面。为了说明多尺度建模框架,我们解释了SDE如何作为化学动力学,种群动力学以及最主要的系统生物学中使用的离散值随机模型类型中的扩散极限自然产生。我们概述了将SDE用作物理模型时存在的一些关键问题,即存在性,唯一性和稳定性,并指出了可能的陷阱。我们还将讨论使用数值方法来模拟SDE的轨迹,并解释弱收敛性和强收敛性如何与高效的多级蒙特卡洛模拟相关。我们标记了我们认为是未来研究的关键主题,特别关注非线性模型,参数估计,不确定性量化,模型比较和多尺度模拟。

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