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Localized sketching for matrix multiplication and ridge regression

Authors :
Srinivasa, Rakshith S
Davenport, Mark A
Romberg, Justin
Publication Year :
2020

Abstract

We consider sketched approximate matrix multiplication and ridge regression in the novel setting of localized sketching, where at any given point, only part of the data matrix is available. This corresponds to a block diagonal structure on the sketching matrix. We show that, under mild conditions, block diagonal sketching matrices require only O(stable rank / \epsilon^2) and $O( stat. dim. \epsilon)$ total sample complexity for matrix multiplication and ridge regression, respectively. This matches the state-of-the-art bounds that are obtained using global sketching matrices. The localized nature of sketching considered allows for different parts of the data matrix to be sketched independently and hence is more amenable to computation in distributed and streaming settings and results in a smaller memory and computational footprint.<br />Comment: Accepted to AISTATS 2020

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2003.09097
Document Type :
Working Paper