Low rank approximation and regression in input sparsity time
Kenneth L. Clarkson, David P. Woodruff
STOC 2013
The CUR decomposition of an m × n matrix A finds an m × c matrix C with a subset of c < n columns of A, together with an r × n matrix R with a subset of r < m rows of A, as well as a c × r low-rank matrix U such that the matrix CUR approximates the matrix A, that is, ∥A-CUR∥2 F ≤ (1 + ϵ) ∥A-Ak∥2 F, where ∥. ∥F denotes the Frobenius norm and Ak is the best m × n matrix of rank k constructed via the SVD. We present input-sparsity-time and deterministic algorithms for constructing such a CUR decomposition where c = O(k/ϵ) and r = O(k/ϵ) and rank(U) = k. Up to constant factors, our algorithms are simultaneously optimal in the values c, r, and rank(U).
Kenneth L. Clarkson, David P. Woodruff
STOC 2013
Srikanta Tirthapura, David P. Woodruff
ICDE 2012
Andrew McGregor, A. Pavan, et al.
Algorithmica
David P. Woodruff
STOC 2011