Stochastic Simulation and Parameter Estimation of the FitzHugh–Nagumo Model
This article illustrates how Mathematica can be employed to model stochastic processes via stochastic differential equations to compute trajectories and their statistical features. In addition, we discuss parameter estimation of the model via the maximum likelihood method with global optimization. We consider handling modeling error, system noise and measurement error, compare the stochastic and deterministic … Continue reading Stochastic Simulation and Parameter Estimation of the FitzHugh–Nagumo Model
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