There is tremendous potential in using neural networks to optimize numerical methods. In this paper, we introduce and analyse a framework for the neural optimization of discrete weak formulations, suitable for finite element methods. The main idea of the framework is to include a neural-network function acting as a control variable in the weak form. Finding the neural control that (quasi-) minimizes a suitable cost (or loss) functional, then yields a numerical approximation with desirable attributes. In particular, the framework allows in a natural way the incorporation of known data of the exact solution, or the incorporation of stabilization mechanisms (e.g., to remove spurious oscillations). The main result of our analysis pertains to th...
In this paper, we address the adversarial training of neural ODEs from a robust control perspective....
Numerical solutions of Partial Differential Equations with Finite Element Method have multiple appli...
Recently, neural networks have been widely applied for solving partial differential equations (PDEs)...
There is tremendous potential in using neural networks to optimize numerical methods. In this paper,...
We propose an abstract framework for analyzing the convergence of least-squares methods based on res...
We consider recent work of Haber and Ruthotto 2017 and Chang et al. 2018, where deep learning neural...
The objectives of this study are the analysis and design of efficient computational methods for deep...
This paper is concerned with utilizing neural networks and analog circuits to solve constrained opti...
This paper is concerned with utilizing neural networks and analog circuits to solve constrained opti...
We consider recent work of Haber and Ruthotto 2017 and Chang et al. 2018, where deep learning neural...
We consider recent work of Haber and Ruthotto 2017 and Chang et al. 2018, where deep learning neural...
Optimization plays a significant role in almost every field of applied sciences (e.g., signal proces...
This paper is concerned with neural networks which have the ability to solve linear and nonlinear co...
We briefly review recent work where deep learning neural networks have been interpreted as discretis...
Petrov-Galerkin formulations with optimal test functions allow for the stabilization of finite eleme...
In this paper, we address the adversarial training of neural ODEs from a robust control perspective....
Numerical solutions of Partial Differential Equations with Finite Element Method have multiple appli...
Recently, neural networks have been widely applied for solving partial differential equations (PDEs)...
There is tremendous potential in using neural networks to optimize numerical methods. In this paper,...
We propose an abstract framework for analyzing the convergence of least-squares methods based on res...
We consider recent work of Haber and Ruthotto 2017 and Chang et al. 2018, where deep learning neural...
The objectives of this study are the analysis and design of efficient computational methods for deep...
This paper is concerned with utilizing neural networks and analog circuits to solve constrained opti...
This paper is concerned with utilizing neural networks and analog circuits to solve constrained opti...
We consider recent work of Haber and Ruthotto 2017 and Chang et al. 2018, where deep learning neural...
We consider recent work of Haber and Ruthotto 2017 and Chang et al. 2018, where deep learning neural...
Optimization plays a significant role in almost every field of applied sciences (e.g., signal proces...
This paper is concerned with neural networks which have the ability to solve linear and nonlinear co...
We briefly review recent work where deep learning neural networks have been interpreted as discretis...
Petrov-Galerkin formulations with optimal test functions allow for the stabilization of finite eleme...
In this paper, we address the adversarial training of neural ODEs from a robust control perspective....
Numerical solutions of Partial Differential Equations with Finite Element Method have multiple appli...
Recently, neural networks have been widely applied for solving partial differential equations (PDEs)...