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arxiv: 1807.02571 · v1 · pith:S5Y6OQN5new · submitted 2018-07-06 · 💻 cs.DS

Leveraging Well-Conditioned Bases: Streaming \& Distributed Summaries in Minkowski p-Norms

classification 💻 cs.DS
keywords algorithmsapproximatedistributednormsstreamingapproximationmatrixmultiplication
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Work on approximate linear algebra has led to efficient distributed and streaming algorithms for problems such as approximate matrix multiplication, low rank approximation, and regression, primarily for the Euclidean norm $\ell_2$. We study other $\ell_p$ norms, which are more robust for $p < 2$, and can be used to find outliers for $p > 2$. Unlike previous algorithms for such norms, we give algorithms that are (1) deterministic, (2) work simultaneously for every $p \geq 1$, including $p = \infty$, and (3) can be implemented in both distributed and streaming environments. We apply our results to $\ell_p$-regression, entrywise $\ell_1$-low rank approximation, and approximate matrix multiplication.

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