research
          
      
      ∙
      04/04/2022
    Deep learning, stochastic gradient descent and diffusion maps
Stochastic gradient descent (SGD) is widely used in deep learning due to...
          
            research
          
      
      ∙
      10/07/2021
    Solving the Dirichlet problem for the Monge-Ampère equation using neural networks
The Monge-Ampère equation is a fully nonlinear partial differential equa...
          
            research
          
      
      ∙
      06/28/2019
    Neural ODEs as the Deep Limit of ResNets with constant weights
In this paper we prove that, in the deep limit, the stochastic gradient ...
          
            research
          
      
      ∙
      08/31/2018
    Data-driven discovery of PDEs in complex datasets
Many processes in science and engineering can be described by partial di...
          
            research
          
      
      ∙
      12/27/2017
    Neural network augmented inverse problems for PDEs
In this paper we show how to augment classical methods for inverse probl...
          
            research
          
      
      ∙
      11/17/2017
     
             
                     
  
  
     
                             share
 share