Improved bounds for randomized Schatten norm estimation of numerically low-rank matrices

IF 1 3区 数学 Q1 MATHEMATICS
Ya-Chi Chu, Alice Cortinovis
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引用次数: 0

Abstract

In this work, we analyze the variance of a stochastic estimator for computing Schatten norms of matrices. The estimator extracts information from a single sketch of the matrix, that is, the product of the matrix with a few standard Gaussian random vectors. While this estimator has been proposed and used in the literature before, the existing variance bounds are often pessimistic. Our work provides a new upper bound and estimates of the variance of this estimator. These theoretical findings are supported by numerical experiments, demonstrating that the new bounds are significantly tighter than the existing ones in the case of numerically low-rank matrices.
数值低秩矩阵的随机夏顿规范估计的改进边界
在这项研究中,我们分析了计算矩阵夏顿规范的随机估计器的方差。该估计器从矩阵的单个草图(即矩阵与几个标准高斯随机向量的乘积)中提取信息。虽然这种估计方法在以前的文献中已经提出并使用过,但现有的方差边界往往是悲观的。我们的研究为这一估计器提供了新的上限和方差估计值。这些理论发现得到了数值实验的支持,实验表明,在数值低阶矩阵的情况下,新的边界比现有的边界要紧密得多。
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来源期刊
CiteScore
2.20
自引率
9.10%
发文量
333
审稿时长
13.8 months
期刊介绍: Linear Algebra and its Applications publishes articles that contribute new information or new insights to matrix theory and finite dimensional linear algebra in their algebraic, arithmetic, combinatorial, geometric, or numerical aspects. It also publishes articles that give significant applications of matrix theory or linear algebra to other branches of mathematics and to other sciences. Articles that provide new information or perspectives on the historical development of matrix theory and linear algebra are also welcome. Expository articles which can serve as an introduction to a subject for workers in related areas and which bring one to the frontiers of research are encouraged. Reviews of books are published occasionally as are conference reports that provide an historical record of major meetings on matrix theory and linear algebra.
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