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REGULARIZED COMPUTATION OF APPROXIMATE PSEUDOINVERSE OF LARGE MATRICES USING LOW-RANK TENSOR TRAIN DECOMPOSITIONS.

Authors :
NAMGIL LEE
CICHOCKI, ANDRZEJ
Source :
SIAM Journal on Matrix Analysis & Applications. 2016, Vol. 37 Issue 2, p598-623. 26p.
Publication Year :
2016

Abstract

We propose a new method for low-rank approximation of Moore-Penrose pseudo-inverses of large-scale matrices using tensor networks. The computed pseudoinverses can be useful for solving or preconditioning of large-scale overdetermined or underdetermined systems of linear equations. The computation is performed efficiently and stably based on the modified alternating least squares scheme using low-rank tensor train (TT) decompositions and tensor network contractions. The formulated large-scale optimization problem is reduced to sequential smaller-scale problems for which any standard and stable algorithms can be applied. A regularization technique is incorporated in order to alleviate ill-posedness and obtain robust low-rank approximations. Numerical simulation results illustrate that the regularized pseudoinverses of a wide class of nonsquare or nonsymmetric matrices admit good approximate low-rank TT representations. Moreover, we demonstrated that the computational cost of the proposed method is only logarithmic in the matrix size given that the TT ranks of a data matrix and its approximate pseudoinverse are bounded. It is illustrated that a strongly nonsymmetric convection-diffusion problem can be efficiently solved by using the preconditioners computed by the proposed method. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
08954798
Volume :
37
Issue :
2
Database :
Academic Search Index
Journal :
SIAM Journal on Matrix Analysis & Applications
Publication Type :
Academic Journal
Accession number :
118462692
Full Text :
https://doi.org/10.1137/15M1028479