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Bayesian inference for differential equations

机译:微分方程的贝叶斯推断

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Nonlinear dynamic systems such as biochemical pathways can be represented in abstract form using a number of modelling formalisms. In particular differential equations provide a highly expressive mathematical framework with which to model dynamic systems, and a very natural way to model the dynamics of a biochemical pathway in a deterministic manner is through the use of nonlinear ordinary or time delay differential equations. However if, for example, we consider a biochemical pathway the constituent chemical species and hence the pathway structure are seldom fully characterised. In addition it is often impossible to obtain values of the rates of activation or decay which form the free parameters of the mathematical model. The system model in many cases is therefore not fully characterised either in terms of structure or the values which parameters take. This uncertainty must be accounted for in a systematic manner when the model is used in simulation or predictive mode to safeguard against reaching conclusions about system characteristics that are unwarranted, or in making predictions that are unjustifiably optimistic given the uncertainty about the model. The Bayesian inferential methodology provides a coherent framework with which to characterise and propagate uncertainty in such mechanistic models and this paper provides an introduction to Bayesian methodology as applied to system models represented as differential equations.
机译:非线性动态系统(例如生化途径)可以使用多种建模形式主义以抽象形式表示。尤其是,微分方程提供了一种高度动态的数学框架,可用来对动力学系统进行建模,而以确定性方式对生化途径动力学进行建模的一种非常自然的方法是使用非线性常微分方程或时滞微分方程。但是,例如,如果我们将生化途径视为组成化学物种,因​​此很少充分表征途径结构。另外,通常不可能获得形成数学模型的自由参数的激活或衰减速率的值。因此,在许多情况下,无论是结构还是参数取值,都无法完全表征系统模型。当模型在仿真或预测模式下使用时,必须以系统的方式解决此不确定性,以防止得出关于不必要的系统特征的结论,或针对给定的模型不确定性做出不合理乐观的预测。贝叶斯推论方法提供了一个连贯的框架,可用来表征和传播这种机械模型中的不确定性,本文介绍了贝叶斯方法的应用,该方法应用于以微分方程表示的系统模型。

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