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  4. MATHICSE Technical Report : Preconditioned low-rank Riemannian optimization for linear systems with tensor product structure
 
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MATHICSE Technical Report : Preconditioned low-rank Riemannian optimization for linear systems with tensor product structure

Kressner, Daniel  
•
Steinlechner, Michael Maximilian  
•
Vandereycken, Bart Carl  
July 1, 2015

The numerical solution of partial differential equations on high-dimensional domains gives rise to computationally challenging linear systems. When using standard discretization techniques, the size of the linear system grows exponentially with the number of dimensions, making the use of classic iterative solvers infeasible. During the last few years, low-rank tensor approaches have been developed that allow to mitigate this curse of dimensionality by exploiting the underlying structure of the linear operator. In this work, we focus on tensors represented in the Tucker and tensor train formats. We propose two preconditioned gradient methods on the corresponding low-rank tensor manifolds: A Riemannian version of the preconditioned Richardson method as well as an approximate Newton scheme based on the Riemannian Hessian. For the latter, considerable attention is given to the efficient solution of the resulting Newton equation. In numerical experiments, we compare the efficiency of our Riemannian algorithms with other established tensor-based approaches such as a truncated preconditioned Richardson method and the alternating linear scheme. The results show that our approximate Riemannian Newton scheme is significantly faster in cases when the application of the linear operator is expensive.

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Type
working paper
DOI
10.5075/epfl-MATHICSE-271902
Author(s)
Kressner, Daniel  
Steinlechner, Michael Maximilian  
Vandereycken, Bart Carl  
Corporate authors
MATHICSE-Group
Date Issued

2015-07-01

Publisher

MATHICSE

Subjects

Tensors

•

Tensor Train

•

Matrix Product States

•

Riemannian Optimization

•

Low Rank

•

High Dimensionality

Note

MATHICSE Technical Report Nr. 18.2015 July 2015

Written at

EPFL

EPFL units
ANCHP  
Available on Infoscience
November 1, 2019
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/162626
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