A continuous analogue of the tensor-train decomposition
Alex A. Gorodetsky, Sertac Karaman, Youssef M. Marzouk

TL;DR
This paper introduces the functional tensor-train (FT), a continuous extension of tensor-train decomposition, enabling more accurate multivariate function approximation without tensorized discretization.
Contribution
It presents a novel framework for computing the FT using adaptive univariate approximations, improving accuracy and robustness over traditional tensor methods.
Findings
FT achieves higher accuracy for the same computational cost.
The approach effectively handles functions with local features and discontinuities.
It enables continuous matrix factorizations like LU and QR for vector-valued functions.
Abstract
We develop new approximation algorithms and data structures for representing and computing with multivariate functions using the functional tensor-train (FT), a continuous extension of the tensor-train (TT) decomposition. The FT represents functions using a tensor-train ansatz by replacing the three-dimensional TT cores with univariate matrix-valued functions. The main contribution of this paper is a framework to compute the FT that employs adaptive approximations of univariate fibers, and that is not tied to any tensorized discretization. The algorithm can be coupled with any univariate linear or nonlinear approximation procedure. We demonstrate that this approach can generate multivariate function approximations that are several orders of magnitude more accurate, for the same cost, than those based on the conventional approach of compressing the coefficient tensor of a tensor-product…
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