Near Optimal Column-Based Matrix Reconstruction

Christos Boutsidis, P. Drineas, M. Magdon-Ismail
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引用次数: 244

Abstract

We consider low-rank reconstruction of a matrix using a subset of its columns and we present asymptotically optimal algorithms for both spectral norm and Frobenius norm reconstruction. The main tools we introduce to obtain our results are: (i) the use of fast approximate SVD-like decompositions for column-based matrix reconstruction, and (ii) two deterministic algorithms for selecting rows from matrices with orthonormal columns, building upon the sparse representation theorem for decompositions of the identity that appeared in [1].
接近最优的基于列的矩阵重构
我们考虑了使用列子集的矩阵的低秩重构,并给出了谱范数和Frobenius范数重构的渐近最优算法。我们引入的主要工具是:(i)使用快速近似类奇异值分解进行基于列的矩阵重构,以及(ii)基于[1]中出现的单位分解的稀疏表示定理,从具有标准正交列的矩阵中选择行的两种确定性算法。
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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