From continuous-time formulations to discretization schemes: tensor trains and robust regression for BSDEs and parabolic PDEs

07/28/2023
by   Lorenz Richter, et al.
0

The numerical approximation of partial differential equations (PDEs) poses formidable challenges in high dimensions since classical grid-based methods suffer from the so-called curse of dimensionality. Recent attempts rely on a combination of Monte Carlo methods and variational formulations, using neural networks for function approximation. Extending previous work (Richter et al., 2021), we argue that tensor trains provide an appealing framework for parabolic PDEs: The combination of reformulations in terms of backward stochastic differential equations and regression-type methods holds the promise of leveraging latent low-rank structures, enabling both compression and efficient computation. Emphasizing a continuous-time viewpoint, we develop iterative schemes, which differ in terms of computational efficiency and robustness. We demonstrate both theoretically and numerically that our methods can achieve a favorable trade-off between accuracy and computational efficiency. While previous methods have been either accurate or fast, we have identified a novel numerical strategy that can often combine both of these aspects.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/23/2021

Solving high-dimensional parabolic PDEs using the tensor train format

High-dimensional partial differential equations (PDEs) are ubiquitous in...
research
06/21/2022

Robust SDE-Based Variational Formulations for Solving Linear PDEs via Deep Learning

The combination of Monte Carlo methods and deep learning has recently le...
research
12/07/2021

Interpolating between BSDEs and PINNs – deep learning for elliptic and parabolic boundary value problems

Solving high-dimensional partial differential equations is a recurrent c...
research
05/07/2023

CUR Decomposition for Scalable Rank-Adaptive Reduced-Order Modeling of Nonlinear Stochastic PDEs with Time-Dependent Bases

Time-dependent basis reduced order models (TDB ROMs) have successfully b...
research
10/25/2019

Towards Robust and Stable Deep Learning Algorithms for Forward Backward Stochastic Differential Equations

Applications in quantitative finance such as optimal trade execution, ri...
research
10/14/2020

Low rank tensor approximation of singularly perturbed partial differential equations in one dimension

We derive rank bounds on the quantized tensor train (QTT) compressed app...

Please sign up or login with your details

Forgot password? Click here to reset