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MiS Preprint Repository

We have decided to discontinue the publication of preprints on our preprint server as of 1 March 2024. The publication culture within mathematics has changed so much due to the rise of repositories such as ArXiV (www.arxiv.org) that we are encouraging all institute members to make their preprints available there. An institute's repository in its previous form is, therefore, unnecessary. The preprints published to date will remain available here, but we will not add any new preprints here.

MiS Preprint
21/2022

Kronecker product approximation of operators in spectral norm via alternating SDP

Mareike Dressler, André Uschmajew and Venkat Chandrasekaran

Abstract

The decomposition or approximation of a linear operator on a matrix space as a sum of Kronecker products plays an important role in matrix equations and low-rank modeling. The approximation problem in Frobenius norm admits a well-known solution via the singular value decomposition. However, the approximation problem in spectral norm, which is more natural for linear operators, is much more challenging. In particular, the Frobenius norm solution can be far from optimal in spectral norm. We describe an alternating optimization method based on semidefinite programming to obtain high-quality approximations in spectral norm, and we present computational experiments to illustrate the advantages of our approach.

Received:
07.07.22
Published:
07.07.22

Related publications

inJournal
2023 Repository Open Access
Mareike Dressler, André Uschmajew and Venkat Chandrasekaran

Kronecker product approximation of operators in spectral norm via alternating SDP

In: SIAM journal on matrix analysis and applications, 44 (2023) 4, pp. 1693-1708