ec 2 00 8 An Improved Approximation Algorithm for the Column Subset Selection Problem ∗
نویسندگان
چکیده
We consider the problem of selecting the “best” subset of exactly k columns from an m× n matrix A. In particular, we present and analyze a novel two-stage algorithm that runs in O(min{mn2,m2n}) time and returns as output an m × k matrix C consisting of exactly k columns of A. In the first stage (the randomized stage), the algorithm randomly selects O(k log k) columns according to a judiciously-chosen probability distribution that depends on information in the top-k right singular subspace of A. In the second stage (the deterministic stage), the algorithm applies a deterministic column-selection procedure to select and return exactly k columns from the set of columns selected in the first stage. Let C be the m × k matrix containing those k columns, let PC denote the projection matrix onto the span of those columns, and let Ak denote the “best” rank-k approximation to the matrix A as computed with the singular value decomposition. Then, we prove that ‖A− PCA‖2 ≤ O ( k 3 4 log 1 2 (k) (n− k) 1 4 ) ‖A−Ak‖2 , with probability at least 0.7. This spectral norm bound improves upon the best previouslyexisting result (of Gu and Eisenstat [23]) for the spectral norm version of this Column Subset Selection Problem. We also prove that ‖A− PCA‖F ≤ O ( k √ log k ) ‖A−Ak‖F , with the same probability. This Frobenius norm bound is only a factor of √ k log k worse than the best previously existing existential result and is roughly O( √ k!) better than the best previous algorithmic result (both of Deshpande et al. [12]) for the Frobenius norm version of this Column Subset Selection Problem.
منابع مشابه
An improved approximation algorithm for the column subset selection problem
We consider the problem of selecting the “best” subset of exactly k columns from an m× n matrix A. In particular, we present and analyze a novel two-stage algorithm that runs in O(min{mn2,m2n}) time and returns as output an m × k matrix C consisting of exactly k columns of A. In the first stage (the randomized stage), the algorithm randomly selects O(k log k) columns according to a judiciously-...
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