p Row Sampling by Lewis Weights

Abstract

We give a simple algorithm to efficiently sample the rows of a matrix while preserving the p-norms of its product with vectors. Given an n-by-d matrix A, we find with high probability and in input sparsity time an A' consisting of about d d rescaled rows of A such that \| A x \|1 is close to \| A' x \|1 for all vectors x. We also show similar results for all p that give nearly optimal sample bounds in input sparsity time. Our results are based on sampling by "Lewis weights", which can be viewed as statistical leverage scores of a reweighted matrix. We also give an elementary proof of the guarantees of this sampling process for 1.

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