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引用次数: 0
摘要
摘要 在这项工作中,我们重新审视了子空间迭代法(SIM)的收敛性分析,该方法用于计算秩为 h 的矩阵 A 的近似值。通常情况下,这些低秩近似值的收敛性分析是通过首先估计 SIM 产生的子空间与 A 的主要子空间之间的(角)距离获得的。我们注意到,如果 A 的第 h 个奇异值位于奇异值群中,这种方法会导致高估近似误差的上限。为了克服这一困难,我们引入了一种主导子空间的替代方法,我们称之为可容许子空间。我们对由 SIM 产生的子空间与可容许子空间进行了接近性分析;反过来,这种分析又使我们能够获得由确定性 SIM 实现的低阶矩阵近似误差的新估计值。我们的结果适用于 A 的第 h 个奇异值属于一个奇异值簇的情况。事实上,我们的方法允许我们考虑 A 的第 h 次奇异值和第((h+1)\)次奇异值重合的情况,而这似乎并不是之前确定性设置中的工作所涵盖的。
Admissible subspaces and the subspace iteration method
Abstract
In this work we revisit the convergence analysis of the Subspace Iteration Method (SIM) for the computation of approximations of a matrix A by matrices of rank h. Typically, the analysis of convergence of these low-rank approximations has been obtained by first estimating the (angular) distance between the subspaces produced by the SIM and the dominant subspaces of A. It has been noticed that this approach leads to upper bounds that overestimate the approximation error in case the hth singular value of A lies in a cluster of singular values. To overcome this difficulty we introduce a substitute for dominant subspaces, which we call admissible subspaces. We develop a proximity analysis of subspaces produced by the SIM to admissible subspaces; in turn, this analysis allows us to obtain novel estimates for the approximation error by low-rank matrices obtained by the implementation of the deterministic SIM. Our results apply in the case when the hth singular value of A belongs to a cluster of singular values. Indeed, our approach allows us to consider the case when the hth and the \((h+1)\)st singular values of A coincide, which does not seem to be covered by previous works in the deterministic setting.
期刊介绍:
The journal BIT has been published since 1961. BIT publishes original research papers in the rapidly developing field of numerical analysis. The essential areas covered by BIT are development and analysis of numerical methods as well as the design and use of algorithms for scientific computing. Topics emphasized by BIT include numerical methods in approximation, linear algebra, and ordinary and partial differential equations.