Open Access
november 2010 Inverse problem for symmetric $P$-symmetric matrices with a submatrix constraint
Xi-yan Hu, Jiao-fen Li, Lei Zhang
Bull. Belg. Math. Soc. Simon Stevin 17(4): 661-674 (november 2010). DOI: 10.36045/bbms/1290608193

Abstract

For a fixed generalized reflection matrix $P$, i.e., $P^T=P, P^2= I$, and $P\neq \pm I$, then a matrix $A $ is called a symmetric $P$-symmetric matrix if $A=A^T$ and $(PA)^T=PA$. This paper is mainly concerned with finding the least squares symmetric $P$-symmetric solutions to the matrix inverse problem $AX=B$ with a submatrix constraint, where $X$ and $B$ are given matrices of suitable size. By applying the generalized singular value decomposition and the canonical correlation decomposition, an analytical expression of the least squares solutions is derived basing on the Projection Theorem in Hilbert inner products spaces. Moreover, in the corresponding solution set, the analytical expression of the unique minimum-norm solution is described in detail.

Citation

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Xi-yan Hu. Jiao-fen Li. Lei Zhang. "Inverse problem for symmetric $P$-symmetric matrices with a submatrix constraint." Bull. Belg. Math. Soc. Simon Stevin 17 (4) 661 - 674, november 2010. https://doi.org/10.36045/bbms/1290608193

Information

Published: november 2010
First available in Project Euclid: 24 November 2010

zbMATH: 1220.15015
MathSciNet: MR2778443
Digital Object Identifier: 10.36045/bbms/1290608193

Subjects:
Primary: ‎15A24‎ , 15A57

Keywords: canonical correlation decomposition , generalized singular value decomposition , inverse problem , least squares solutions , symmetric $P$-symmetric matrix

Rights: Copyright © 2010 The Belgian Mathematical Society

Vol.17 • No. 4 • november 2010
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