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Multiphase MCMC Sampling for Parameter Inference in Nonlinear Ordinary Differential Equations

机译:非线性常微分方程参数推断的多相MCMC采样

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Traditionally, ODE parameter inference relies on solving the system of ODEs and assessing fit of the estimated signal with the observations. However, nonlinear ODEs often do not permit closed form solutions. Using numerical methods to solve the equations results in prohibitive computational costs, particularly when one adopts a Bayesian approach in sampling parameters from a posterior distribution. With the introduction of gradient matching, we can abandon the need to numerically solve the system of equations. Inherent in these efficient procedures is an introduction of bias to the learning problem as we no longer sample based on the exact likelihood function. This paper presents a multiphase MCMC approach that attempts to close the gap between efficiency and accuracy. By sampling using a surrogate likelihood, we accelerate convergence to the stationary distribution before sampling using the exact likelihood. We demonstrate that this method combines the efficiency of gradient matching and the accuracy of the exact likelihood scheme.
机译:传统上,ODE参数推断依赖于求解ODE系统并根据观测值评估估计信号的拟合度。但是,非线性ODE通常不允许封闭形式的解决方案。使用数值方法求解方程会导致计算成本过高,尤其是当采用贝叶斯方法从后验分布中采样参数时。通过引入梯度匹配,我们可以消除对方程组进行数值求解的需要。这些有效程序中固有的是对学习问题的偏见的引入,因为我们不再基于精确的似然函数进行采样。本文提出了一种多相MCMC方法,该方法试图缩小效率和精度之间的差距。通过使用替代可能性进行采样,我们可以在使用精确可能性进行采样之前将收敛速度加快到平稳分布。我们证明了该方法结合了梯度匹配的效率和精确似然方案的准确性。

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