The method of choice for integrating the time-dependent Fokker-Planck equation in high-dimension is to generate samples from the solution via integration of the associated stochastic differential equation. Here, we introduce an alternative scheme based on integrating an ordinary differential equation that describes the flow of probability. Unlike the stochastic dynamics, this equation deterministically pushes samples from the initial density onto samples from the solution at any later time. The method has the advantage of giving direct access to quantities that are challenging to estimate only given samples from the solution, such as the probability current, the density itself, and its entropy. The probability flow equation depends on the g...
In this work, we propose an adaptive learning approach based on temporal normalizing flows for solvi...
The reconstruction of the Fokker-Planck equations from time series without prior information is stil...
Simulation-based techniques such as variants of stochastic Runge–Kutta are the de facto approach for...
In this work, we propose a method to learn multivariate probability distributions using sample path ...
International audienceThe Fokker--Planck equation describes the evolution of a probability distribut...
peer reviewedIn many engineering matters, systems are submitted to random excitations. Probabilistic...
Given a desired target distribution and an initial guess of that distribution, composed of finitely ...
Modeling and predicting the transient behavior of higher dimensional nonlinear dynamical systems sub...
In this talk, we consider a class of multiscale stochastic system for which the evolution of the pro...
Minimal models for the explanation of decision-making in computational neuroscience are based on the...
A stochastic process or sometimes called random process is the counterpart to a deterministic proces...
In this paper, we develop and analyze numerical methods for high dimensional Fokker-Planck equations...
We discretize spatial domains into lattices. We provide the multivariate Fokker-Planck partial diffe...
To describe the collective behavior of large ensembles of neurons in neuronal network, a kinetic the...
Probabilistic theories aim at describing the properties of systems subjected to random excitations b...
In this work, we propose an adaptive learning approach based on temporal normalizing flows for solvi...
The reconstruction of the Fokker-Planck equations from time series without prior information is stil...
Simulation-based techniques such as variants of stochastic Runge–Kutta are the de facto approach for...
In this work, we propose a method to learn multivariate probability distributions using sample path ...
International audienceThe Fokker--Planck equation describes the evolution of a probability distribut...
peer reviewedIn many engineering matters, systems are submitted to random excitations. Probabilistic...
Given a desired target distribution and an initial guess of that distribution, composed of finitely ...
Modeling and predicting the transient behavior of higher dimensional nonlinear dynamical systems sub...
In this talk, we consider a class of multiscale stochastic system for which the evolution of the pro...
Minimal models for the explanation of decision-making in computational neuroscience are based on the...
A stochastic process or sometimes called random process is the counterpart to a deterministic proces...
In this paper, we develop and analyze numerical methods for high dimensional Fokker-Planck equations...
We discretize spatial domains into lattices. We provide the multivariate Fokker-Planck partial diffe...
To describe the collective behavior of large ensembles of neurons in neuronal network, a kinetic the...
Probabilistic theories aim at describing the properties of systems subjected to random excitations b...
In this work, we propose an adaptive learning approach based on temporal normalizing flows for solvi...
The reconstruction of the Fokker-Planck equations from time series without prior information is stil...
Simulation-based techniques such as variants of stochastic Runge–Kutta are the de facto approach for...