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A finite volume method for stochastic integrate–and–fire models

Fabien Marpeau, Aditya Barua and Kresimir Josíc

The stochastic integrate and fire neuron is one of the most commonly used stochastic models in neuroscience.  Although some cases are  analytically tractable, a full analysis typically calls for numerical simulations.   We present a fast and accurate finite volume method to approximate the solution of  the associated Fokker-Planck equation.  The discretization of the boundary conditions offers a particular challenge, as standard operator splitting approaches cannot be applied without modification.  We demonstrate the method using stationary and time dependent inputs, and compare them with Monte Carlo simulations.  Such simulations are relatively easy to implement, but can suffer from convergence difficulties and long run times.    In comparison, our method offers improved accuracy, and decreases computation times
by several orders of magnitude. The method can easily be extended to two and three dimensional Fokker-Planck equations.

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