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A Schur-based algorithm for computing bounds to the smallest eigenvalue of a symmetric positive definite Toeplitz matrix

机译:基于Schur的算法,用于计算对称正定Toeplitz矩阵的最小特征值的范围

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摘要

Recent progress in signal processing and estimation has generated considerable interest in the problem of computing the smallest eigenvalue of symmetric positive definite Toeplitz matrices. Several algorithms have been proposed in the literature. They compute the smallest eigenvalue in an iterative fashion, many of them relying on the Levinson-Durbin solution of sequences of Yule-Walker systems. Exploiting the properties of two algorithms recently developed for estimating a lower and an upper bound of the smallest singular value of upper triangular matrices, respectively, an algorithm for computing bounds to the smallest eigenvalue of a symmetric positive definite Toeplitz; matrix is derived. The algorithm relies on the computation of the R factor of the QR-factorization of the Toeplitz matrix and the inverse of R. The simultaneous computation of R and R-1 is efficiently accomplished by the generalized Schur algorithm. (c) 2007 Elsevier Inc. All rights reserved.
机译:信号处理和估计的最新进展引起了人们对计算对称正定Toeplitz矩阵的最小特征值的兴趣。文献中已经提出了几种算法。它们以迭代的方式计算最小的特征值,其中许多依赖于Yule-Walker系统序列的Levinson-Durbin解决方案。利用最近开发的两种用于分别估计上三角矩阵的最小奇异值的下限和上限的算法的性质,该算法用于计算对称正定Toeplitz的最小特征值的界限;得出矩阵。该算法依赖于Toeplitz矩阵QR分解的R因子的计算和R的逆。R和R-1的同步计算可通过广义Schur算法有效完成。 (c)2007 Elsevier Inc.保留所有权利。

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