Laplace based approximate posterior inference for differential equation models
Sarat C. Dass, Jaeyong Lee, Kyoungjae Lee, Jonghun Park

TL;DR
This paper introduces a Laplace approximation-based method for efficient and accurate Bayesian parameter inference in differential equation models, overcoming computational challenges of traditional approaches.
Contribution
It proposes a two-step approximation method combining numerical solutions of differential equations with Laplace approximation for Bayesian inference, offering a faster alternative to MCMC.
Findings
The method provides more stable estimators than collocation methods.
It converges to the true posterior under certain conditions.
The approach is validated on simulated data, outperforming existing methods.
Abstract
Ordinary differential equations are arguably the most popular and useful mathematical tool for describing physical and biological processes in the real world. Often, these physical and biological processes are observed with errors, in which case the most natural way to model such data is via regression where the mean function is defined by an ordinary differential equation believed to provide an understanding of the underlying process. These regression based dynamical models are called differential equation models. Parameter inference from differential equation models poses computational challenges mainly due to the fact that analytic solutions to most differential equations are not available. In this paper, we propose an approximation method for obtaining the posterior distribution of parameters in differential equation models. The approximation is done in two steps. In the first step,…
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