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Projection-Cost-Preserving Sketches: Proof Strategies and Constructions

17 April 2020
Cameron Musco
Christopher Musco
ArXiv (abs)PDFHTML
Abstract

In this note we illustrate how common matrix approximation methods, such as random projection and random sampling, yield projection-cost-preserving sketches, as introduced in [FSS13, CEM+15]. A projection-cost-preserving sketch is a matrix approximation which, for a given parameter kkk, approximately preserves the distance of the target matrix to all kkk-dimensional subspaces. Such sketches have applications to scalable algorithms for linear algebra, data science, and machine learning. Our goal is to simplify the presentation of proof techniques introduced in [CEM+15] and [CMM17] so that they can serve as a guide for future work. We also refer the reader to [CYD19], which gives a similar simplified exposition of the proof covered in Section 2.

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