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Smooth functional tempering for nonlinear differential equation models

机译:非线性微分方程模型的光滑泛函

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摘要

Differential equations are used in modeling diverse system behaviors in a wide variety of sciences. Methods for estimating the differential equation parameters traditionally depend on the inclusion of initial system states and numerically solving the equations. This paper presents Smooth Functional Tempering, a new population Markov Chain Monte Carlo approach for posterior estimation of parameters. The proposed method borrows insights from parallel tempering and model based smoothing to define a sequence of approximations to the posterior. The tempered approximations depend on relaxations of the solution to the differential equation model, reducing the need for estimating the initial system states and obtaining a numerical differential equation solution. Rather than tempering via approximations to the posterior that are more heavily rooted in the prior, this new method tempers towards data features. Using our proposed approach, we observed faster convergence and robustness to both initial values and prior distributions that do not reflect the features of the data. Two variations of the method are proposed and their performance is examined through simulation studies and a real application to the chemical reaction dynamics of producing nylon.
机译:在广泛的科学领域中,微分方程用于建模各种系统行为。传统上,估计微分方程参数的方法取决于初始系统状态的包含和对方程的数值求解。本文提出了平滑函数回火,这是一种用于参数后验的新种群马尔可夫链蒙特卡洛方法。所提出的方法借鉴了平行回火和基于模型的平滑的见解,以定义后验近似序列。回火的近似值取决于对微分方程模型解的松弛,从而减少了估计初始系统状态并获得数值微分方程解的需要。该新方法不是通过对后验的近似来进行调和,而对后验的近似值扎根于先验,而是针对数据特征进行调和。使用我们提出的方法,我们观察到初始值和先前分布的收敛速度和健壮性都没有反映数据的特征。提出了该方法的两种变体,并通过模拟研究和实际应用将其性能应用于生产尼龙的化学反应动力学。

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