Projection-Cost-Preserving Sketches: Proof Strategies and Constructions

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Authors Cameron Musco, Christopher Musco arXiv ID 2004.08434 Category cs.DS: Data Structures & Algorithms Cross-listed cs.LG, math.NA Citations 13 Venue arXiv.org Last Checked 3 months ago
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 $k$, approximately preserves the distance of the target matrix to all $k$-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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