Recently, extracting data-driven governing laws of dynamical systems through deep learning frameworks has gained a lot of attention in various fields. Moreover, a growing amount of research work tends to transfer deterministic dynamical systems to stochastic dynamical systems, especially those driven by non-Gaussian multiplicative noise. However, lots of log-likelihood based algorithms that work well for Gaussian cases cannot be directly extended to non-Gaussian scenarios which could have high error and low convergence issues. In this work, we overcome some of these challenges and identify stochastic dynamical systems driven by $\alpha$-stable L\'evy noise from only random pairwise data. Our innovations include: (1) designing a deep learnin...
We introduce a machine-learning framework named statistics-informed neural network (SINN) for learni...
Quantifying stochastic processes is essential to understand many natural phenomena, particularly in ...
Many complex real world phenomena exhibit abrupt, intermittent or jumping behaviors, which are more ...
In this dissertation, we present our work on automating discovery of governing equations for stochas...
Thesis (Ph.D.)--University of Washington, 2018Stochastic dynamical systems, as a rapidly growing are...
The data-driven recovery of the unknown governing equations of dynamical systems has recently receiv...
In this article, we employ a collection of stochastic differential equations with drift and diffusio...
We identify effective stochastic differential equations (SDE) for coarse observables of fine-grained...
In this thesis, we are concerned with the Stochastic Gradient Descent (SGD) algorithm. Specifically,...
In this thesis, we study model parameterization for deep learning applications. Part of the mathemat...
Stochastic Gradient Descent (SGD) is the workhorse algorithm of deep learning technology. At each st...
In this work, we propose a method to learn multivariate probability distributions using sample path ...
International audienceStochastic differential equations (SDEs) are one of the most important represe...
The paper introduces a method for reconstructing one-dimensional iterated maps that are driven by an...
Finding the dynamical law of observable quantities lies at the core of physics. Within the particula...
We introduce a machine-learning framework named statistics-informed neural network (SINN) for learni...
Quantifying stochastic processes is essential to understand many natural phenomena, particularly in ...
Many complex real world phenomena exhibit abrupt, intermittent or jumping behaviors, which are more ...
In this dissertation, we present our work on automating discovery of governing equations for stochas...
Thesis (Ph.D.)--University of Washington, 2018Stochastic dynamical systems, as a rapidly growing are...
The data-driven recovery of the unknown governing equations of dynamical systems has recently receiv...
In this article, we employ a collection of stochastic differential equations with drift and diffusio...
We identify effective stochastic differential equations (SDE) for coarse observables of fine-grained...
In this thesis, we are concerned with the Stochastic Gradient Descent (SGD) algorithm. Specifically,...
In this thesis, we study model parameterization for deep learning applications. Part of the mathemat...
Stochastic Gradient Descent (SGD) is the workhorse algorithm of deep learning technology. At each st...
In this work, we propose a method to learn multivariate probability distributions using sample path ...
International audienceStochastic differential equations (SDEs) are one of the most important represe...
The paper introduces a method for reconstructing one-dimensional iterated maps that are driven by an...
Finding the dynamical law of observable quantities lies at the core of physics. Within the particula...
We introduce a machine-learning framework named statistics-informed neural network (SINN) for learni...
Quantifying stochastic processes is essential to understand many natural phenomena, particularly in ...
Many complex real world phenomena exhibit abrupt, intermittent or jumping behaviors, which are more ...