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Preprint article · Journal article

Spectral Tensor-Train Decomposition

From

Department of Applied Mathematics and Computer Science, Technical University of Denmark1

Scientific Computing, Department of Applied Mathematics and Computer Science, Technical University of Denmark2

Massachusetts Institute of Technology3

The accurate approximation of high-dimensional functions is an essential task in uncertainty quantification and many other fields. We propose a new function approximation scheme based on a spectral extension of the tensor-train (TT) decomposition. We first define a functional version of the TT decomposition and analyze its properties.

We obtain results on the convergence of the decomposition, revealing links between the regularity of the function, the dimension of the input space, and the TT ranks. We also show that the regularity of the target function is preserved by the univariate functions (i.e., the “cores”) comprising the functional TT decomposition.

This result motivates an approximation scheme employing polynomial approximations of the cores. For functions with appropriate regularity, the resulting spectral tensor-train decomposition combines the favorable dimension-scaling of the TT decomposition with the spectral convergence rate of polynomial approximations, yielding efficient and accurate surrogates for high-dimensional functions.

To construct these decompositions, we use the sampling algorithm \tt TT-DMRG-cross to obtain the TT decomposition of tensors resulting from suitable discretizations of the target function. We assess the performance of the method on a range of numerical examples: a modified set of Genz functions with dimension up to 100, and functions with mixed Fourier modes or with local features.

We observe significant improvements in performance over an anisotropic adaptive Smolyak approach. The method is also used to approximate the solution of an elliptic PDE with random input data. The open source software and examples presented in this work are available online (http://pypi.python.org/pypi/TensorToolbox/).

Language: English
Year: 2016
Pages: A2405-A2439
ISSN: 10957197 , 10648275 and 00361445
Types: Preprint article and Journal article
DOI: 10.1137/15M1036919
ORCIDs: Engsig-Karup, Allan Peter
Other keywords

41A10 41A63 41A65 46M05 65D15 math.NA

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