A sublinear-time randomized algorithm for column and row subset selection based on strong rank-revealing QR factorizations
A sublinear-time randomized algorithm for column and row subset selection based on strong rank-revealing QR factorizations
In this work, we analyze a sublinear-time algorithm for selecting a few rows and columns of a matrix for low-rank approximation purposes. The algorithm is based on an initial uniformly random selection of rows and columns, followed by a refinement of this choice using a strong rank-revealing QR factorization. We prove bounds on the error of the corresponding low-rank approximation (more precisely, the CUR approximation error) when the matrix is a perturbation of a low-rank matrix that can be factorized into the product of matrices with suitable incoherence and/or sparsity assumptions.
Alice Cortinovis、Lexing Ying
计算技术、计算机技术
Alice Cortinovis,Lexing Ying.A sublinear-time randomized algorithm for column and row subset selection based on strong rank-revealing QR factorizations[EB/OL].(2024-02-21)[2025-08-02].https://arxiv.org/abs/2402.13975.点此复制
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