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Weighted sampling of outer products (1410.4429v1)

Published 16 Oct 2014 in cs.DS

Abstract: This note gives a simple analysis of the randomized approximation scheme for matrix multiplication of Drineas et al (2006) with a particular sampling distribution over outer products. The result follows from a matrix version of Bernstein's inequality. To approximate the matrix product $AB\top$ to spectral norm error $\varepsilon|A||B|$, it suffices to sample on the order of $(\mathrm{sr}(A) \vee \mathrm{sr}(B)) \log(\mathrm{sr}(A) \wedge \mathrm{sr}(B)) / \varepsilon2$ outer products, where $\mathrm{sr}(M)$ is the stable rank of a matrix $M$.

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