On TLS formulation and core reduction for data fitting with generalized models

dc.contributor.authorHnětynková, Iveta
dc.contributor.authorPlešinger, Martin
dc.contributor.authorŽáková, Jana
dc.date.accessioned2019-07-24T09:16:08Z
dc.date.available2019-07-24T09:16:08Z
dc.date.issued2019-07-24
dc.description.abstractThe total least squares (TLS) framework represents a popular data fitting approach for solving matrix approximation problems of the form A(X) ≡ AX ≈ B. A general linear mapping on spaces of matrices A ∶ X → B can be represented by a fourth-order tensor which is in the AX ≈ B case highly structured. This has a direct impact on solvability of the corresponding TLS problem, which is known to be complicated. Thus this paper focuses on several generalizations of the model A: the bilinear model, the model of higher Kronecker rank, and the fully tensorized model. It is shown how the corresponding generalization of the TLS formulation induces enrichment of the search space for the data corrections. Solvability of the resulting minimization problem is studied. Furthermore, extension of the so-called core reduction to the bilinear model is presented. For the fully tensor model, its relation to a particular single right-hand side TLS problem is derived. Relationships among individual formulations are discussed.cs
dc.format.extent20 strancs
dc.identifier.urihttps://dspace.tul.cz/handle/15240/152943
dc.identifier.urihttps://www.sciencedirect.com/science/article/pii/S0024379519301703?via%3Dihub
dc.language.isocscs
dc.relation.ispartofLinear Algebra and its Applications
dc.subjectTotal least squares problem (TLS)cs
dc.subjectError-in-variables modelingcs
dc.subjectOrthogonal regressioncs
dc.subjectMultiple observationscs
dc.subjectCore problemcs
dc.subjectTensor approximation problemcs
dc.titleOn TLS formulation and core reduction for data fitting with generalized modelscs
local.citation.epage20
local.citation.spage1
local.relation.issue577 (2019)
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