Shortening of Paraunitary Matrices Obtained by Polynomial Eigenvalue Decomposition Algorithms

J. Corr, K. Thompson, Stephan Weiss, I. Proudler, J. McWhirter
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引用次数: 22

Abstract

This paper extends the analysis of the recently introduced row- shift corrected truncation method for paraunitary matrices to those produced by the state-of-the-art sequential matrix diagonalisation (SMD) family of polynomial eigenvalue decomposition (PEVD) algorithms. The row-shift corrected truncation method utilises the ambiguity in the paraunitary matrices to reduce their order. The results presented in this paper compare the effect a simple change in PEVD method can have on the performance of the paraunitary truncation. In the case of the SMD algorithm the benefits of the new approach are reduced compared to what has been seen before however there is still a reduction in both reconstruction error and paraunitary matrix order.
由多项式特征值分解算法得到的拟酉矩阵的缩短
本文将最近引入的准酉矩阵的行移校正截断方法的分析扩展到由最先进的序列矩阵对角化(SMD)家族的多项式特征值分解(PEVD)算法产生的准酉矩阵。行移校正截断法利用准酉矩阵的模糊性来降低其阶数。本文的结果比较了PEVD方法的简单改变对准体截断性能的影响。在SMD算法的情况下,与之前看到的相比,新方法的好处减少了,但是仍然减少了重建误差和准酉矩阵顺序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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