HaidaQuant/Branching-Diffusion-Method-for-Solving-PDEs-in-Matlab-
This Matlab code implements a branching diffusion method for solving partial differential equations (PDEs). The method uses Monte Carlo simulation and the branching process to approximate the solution of PDEs. The code provides a set of functions to calculate the mean, standard deviation, and L2 approximation error of the solution.
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Language
MATLAB
License
MIT
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Last pushed
May 14, 2023
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