2023
DOI: 10.1007/s11222-023-10289-1
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Laplace based Bayesian inference for ordinary differential equation models using regularized artificial neural networks

Wai M. Kwok,
George Streftaris,
Sarat C. Dass

Abstract: Parameter estimation and associated uncertainty quantification is an important problem in dynamical systems characterised by ordinary differential equation (ODE) models that are often nonlinear. Typically, such models have analytically intractable trajectories which result in likelihoods and posterior distributions that are similarly intractable. Bayesian inference for ODE systems via simulation methods require numerical approximations to produce inference with high accuracy at a cost of heavy computational po… Show more

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