Optimal Column-Based Low-Rank Matrix Reconstruction
Abstract
We prove that for any real-valued matrix X ∈ m × n, and positive integers r k, there is a subset of r columns of X such that projecting X onto their span gives a r+1r-k+1-approximation to best rank-k approximation of X in Frobenius norm. We show that the trade-off we achieve between the number of columns and the approximation ratio is optimal up to lower order terms. Furthermore, there is a deterministic algorithm to find such a subset of columns that runs in O(r n mω m) arithmetic operations where ω is the exponent of matrix multiplication. We also give a faster randomized algorithm that runs in O(r n m2) arithmetic operations.
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