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A comparison of approximate versus exact techniques for Bayesian parameter inference in nonlinear ordinary differential equation models

机译:非线性常微分方程模型中贝叶斯参数推断的近似与精确技术的比较

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The behaviour of many processes in science and engineering can be accurately described by dynamical system models consisting of a set of ordinary differential equations (ODEs). Often these models have several unknown parameters that are difficult to estimate from experimental data, in which case Bayesian inference can be a useful tool. In principle, exact Bayesian inference using Markov chain Monte Carlo (MCMC) techniques is possible; however, in practice, such methods may suffer from slow convergence and poor mixing. To address this problem, several approaches based on approximate Bayesian computation (ABC) have been introduced, including Markov chain Monte Carlo ABC (MCMC ABC) and sequential Monte Carlo ABC (SMC ABC). While the system of ODEs describes the underlying process that generates the data, the observed measurements invariably include errors. In this paper, we argue that several popular ABC approaches fail to adequately model these errors because the acceptance probability depends on the choice of the discrepancy function and the tolerance without any consideration of the error term. We observe that the so-called posterior distributions derived from such methods do not accurately reflect the epistemic uncertainties in parameter values. Moreover, we demonstrate that these methods provide minimal computational advantages over exact Bayesian methods when applied to two ODE epidemiological models with simulated data and one with real data concerning malaria transmission in Afghanistan.
机译:可以通过由一组常微分方程(ODES)组成的动态系统模型来准确地描述许多科学和工程过程的行为。通常,这些模型具有几个难以从实验数据估计的未知参数,在这种情况下,贝叶斯推理可以是一个有用的工具。原则上,可以使用马尔可夫链蒙特卡罗(MCMC)技术的精确贝叶斯推断;然而,在实践中,这种方法可能遭受缓慢的收敛性和差的混合。为了解决这个问题,已经引入了基于近似贝叶斯计算(ABC)的几种方法,包括Markov Chain Monte Carlo ABC(MCMC ABC)和顺序蒙特卡罗ABC(SMC ABC)。虽然ODES系统描述了生成数据的底层过程,但观察到的测量总是包括错误。在本文中,我们认为几种流行的ABC方法无法充分模仿这些错误,因为接受概率取决于差异函数的选择和公差而不考虑错误项。我们观察到从这些方法导出的所谓的后部分布不会准确地反映参数值中的认知不确定性。此外,我们证明这些方法在应用于两个颂歌流行病学模型时,这些方法提供了在具有模拟数据的两个颂歌流行病学模型中的最小计算优势,以及具有关于阿富汗疟疾传输的真实数据。

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