International audienceStochastic differential equations (SDEs) are one of the most important representations of dynamical systems. They are notable for the ability to include a deterministic component of the system and a stochastic one to represent random unknown factors. However, this makes learning SDEs much more challenging than ordinary differential equations (ODEs). In this paper, we propose a data driven approach where parameters of the SDE are represented by a neural network with a built-in SDE integration scheme. The loss function is based on a maximum likelihood criterion, under order one Markov Gaussian assumptions. The algorithm is applied to the geometric brownian motion and a stochastic version of the Lorenz-63 model. The latte...
© 1991-2012 IEEE. In this paper, we propose a non-parametric method for state estimation of high-dim...
Generative adversarial networks (GANs) have shown promising results when applied on partial differen...
Automatic machine learning of empirical models from experimental data has recently become possible a...
International audienceStochastic differential equations (SDEs) are one of the most important represe...
Stochastic differential equations (SDEs) are a staple of mathematical modelling of temporal dynamics...
In this dissertation, we present our work on automating discovery of governing equations for stochas...
Stochastic partial differential equations (SPDEs) are the mathematical tool of choice for modelling ...
We introduce a machine-learning framework named statistics-informed neural network (SINN) for learni...
Defence is held on 18.2.2022 12:15 – 16:15 (Zoom), https://aalto.zoom.us/j/61873808631Mechanistic...
Influenced by the seminal work, “Physics Informed Neural Networks” by Raissi et al., 2017, there has...
Dynamical systems present in the real world are often well represented using stochastic differential...
In this thesis, we study model parameterization for deep learning applications. Part of the mathemat...
Stochastic differential equations (SDEs) are used to describe a wide variety of complex stochastic d...
We propose a new class of physics-informed neural networks, called physics-informed Variational Auto...
we consider a variant of the conventional neural network model, called the stochastic neural network...
© 1991-2012 IEEE. In this paper, we propose a non-parametric method for state estimation of high-dim...
Generative adversarial networks (GANs) have shown promising results when applied on partial differen...
Automatic machine learning of empirical models from experimental data has recently become possible a...
International audienceStochastic differential equations (SDEs) are one of the most important represe...
Stochastic differential equations (SDEs) are a staple of mathematical modelling of temporal dynamics...
In this dissertation, we present our work on automating discovery of governing equations for stochas...
Stochastic partial differential equations (SPDEs) are the mathematical tool of choice for modelling ...
We introduce a machine-learning framework named statistics-informed neural network (SINN) for learni...
Defence is held on 18.2.2022 12:15 – 16:15 (Zoom), https://aalto.zoom.us/j/61873808631Mechanistic...
Influenced by the seminal work, “Physics Informed Neural Networks” by Raissi et al., 2017, there has...
Dynamical systems present in the real world are often well represented using stochastic differential...
In this thesis, we study model parameterization for deep learning applications. Part of the mathemat...
Stochastic differential equations (SDEs) are used to describe a wide variety of complex stochastic d...
We propose a new class of physics-informed neural networks, called physics-informed Variational Auto...
we consider a variant of the conventional neural network model, called the stochastic neural network...
© 1991-2012 IEEE. In this paper, we propose a non-parametric method for state estimation of high-dim...
Generative adversarial networks (GANs) have shown promising results when applied on partial differen...
Automatic machine learning of empirical models from experimental data has recently become possible a...