Read here the properly rendered readme file for now...
(under construction - for more detailed info please read the relevant article)
Particle-based framework for simulating solutions of Fokker–Planck equations that
- is effortless to set up
- provides smooth transient solutions
- is computationally efficient.
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Consider a stochastic system described by the SDE
The temporal evolution of the probability density of the system state is captured by the Fokker-Planck equation (FPE)The FPE may be re-written in the form of a Liouville equation
! [Eq.(3-5) in the main text]
which in turn may be viewed as an evolution equation of the probability distribution of a statistical ensemble of N deterministic dynamical systems of the form [Eq.(4-5) in the main text]
with i=1,...,N.
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In a similar vain, for state dependent diffusion
the associated deterministic particle dynamics are
! [Eq.(53) {in the main text]
Eq.(1) and Eq.(2) imply that we may obtain transient solutions of the associated FPEs by simulating ensembles of deterministic trajectories/particles with initial conditions drawn from the starting distribution
However, the deterministic particle dynamics in Eq.(1) and Eq.(2) require the knowledge of
Citations:
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Maoutsa, Dimitra; Reich, Sebastian; Opper, Manfred. Interacting Particle Solutions of Fokker–Planck Equations Through Gradient–Log–Density Estimation. Entropy 2020, 22, 802.
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Hyvärinen, Aapo. Estimation of non-normalized statistical models by score matching. Journal of Machine Learning Research 2005, 695-709.