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An iterative method for obtaining the Least squares solutions of quadratic inverse eigenvalue problems over generalized Hamiltonian matrix with submatrix constraints

机译:具有子矩阵约束的广义哈密顿矩阵上求二次逆特征值问题的最小二乘解的迭代方法

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摘要

In this paper, we consider a class of constrained matrix quadratic inverse eigenvalue problem and its optimal approximation problem. It is proved that the proposed algorithm always converge to the generalized Hamiltonian solutions with a submatrix constraint of Problem 1.1 within finite iterative steps in the absence of roundoff error. In addition, by choosing a special kind of initial matrices, it is shown that the minimum norm solution of Problem 1.1 can be obtained consequently. At last, for a given matrix group in the solution set of Problem 1.1, it is proved that the unique optimal approximation solution of Problem 1.2 can be also obtained. Some numerical results are reported to demonstrate the efficiency of our algorithm. (C) 2018 Elsevier Ltd. All rights reserved.
机译:在本文中,我们考虑了一类约束矩阵二次逆特征值问题及其最优逼近问题。实践证明,在不存在舍入误差的情况下,该算法始终可以在有限的迭代步长内收敛到问题1.1的子矩阵约束的广义Hamilton解。另外,通过选择一种特殊的初始矩阵,表明可以得到问题1.1的最小范数解。最后,对于问题1.1的解集中的给定矩阵组,证明了问题1.2的唯一最优逼近解也可以得到。据报道一些数值结果证明了我们算法的有效性。 (C)2018 Elsevier Ltd.保留所有权利。

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