An inverse eigenproblem and an associated approximation problem for generalized reflexive and anti-reflexive matrices
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摘要
In this paper, we first give the existence of and the general expression for the solution to an inverse eigenproblem defined as follows: given a set of real n-vectors {xi}i=1m and a set of real numbers {λi}i=1m, and an n-by-n real generalized reflexive matrix A (or generalized anti-reflexive matrix B) such that {xi}i=1m and {λi}i=1m are the eigenvectors and eigenvalues of A (or B), respectively, we solve the best approximation problem for the inverse eigenproblem. That is, given an arbitrary real n-by-n matrix Ã, we find a matrix Aà which is the solution to the inverse eigenproblem such that the distance between à and Aà is minimized in the Frobenius norm. We give an explicit solution and a numerical algorithm for the best approximation problem over generalized reflexive (or generalized anti-reflexive) matrices. Two numerical examples are also presented to show that our method is effective.
论文关键词:15A18,15A57,65F18,65F15,Inverse eigenproblem,Approximation problem,Generalized reflexive matrix,Generalized anti-reflexive matrix,Moore–Penrose inverse
论文评审过程:Received 19 July 2010, Revised 14 October 2010, Available online 22 December 2010.
论文官网地址:https://doi.org/10.1016/j.cam.2010.12.016