Tensor-Sparsity of Solutions to High-Dimensional Elliptic Partial Differential Equations
Wolfgang Dahmen, Ronald DeVore, Lars Grasedyck, and Endre S\"uli

TL;DR
This paper introduces tensor sparsity concepts for high-dimensional elliptic PDEs, proving regularity theorems and demonstrating how these can lead to algorithms that break the curse of dimensionality.
Contribution
It develops new tensor sparsity models for high-dimensional PDE solutions and proves regularity results, enabling computational methods that overcome the curse of dimensionality.
Findings
Regularity theorems for tensor-sparse solutions
Basis-free tensor sparsity model
Algorithms breaking the curse of dimensionality
Abstract
A recurring theme in attempts to break the curse of dimensionality in the numerical approximations of solutions to high-dimensional partial differential equations (PDEs) is to employ some form of sparse tensor approximation. Unfortunately, there are only a few results that quantify the possible advantages of such an approach. This paper introduces a class of functions, which can be written as a sum of rank-one tensors using a total of at most parameters and then uses this notion of sparsity to prove a regularity theorem for certain high-dimensional elliptic PDEs. It is shown, among other results, that whenever the right-hand side of the elliptic PDE can be approximated with a certain rate in the norm of by elements of , then the solution can be approximated in from to accuracy…
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Taxonomy
TopicsTensor decomposition and applications · Advanced Numerical Methods in Computational Mathematics · Matrix Theory and Algorithms
