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arXiv:2009.08089 [math.NA]AbstractReferencesReviewsResources

Quantile-based Iterative Methods for Corrupted Systems of Linear Equations

Jamie Haddock, Deanna Needell, Elizaveta Rebrova, William Swartworth

Published 2020-09-17Version 1

Often in applications ranging from medical imaging and sensor networks to error correction and data science (and beyond), one needs to solve large-scale linear systems in which a fraction of the measurements have been corrupted. We consider solving such large-scale systems of linear equations $\mathbf{A}\mathbf{x}=\mathbf{b}$ that are inconsistent due to corruptions in the measurement vector $\mathbf{b}$. We develop several variants of iterative methods that converge to the solution of the uncorrupted system of equations, even in the presence of large corruptions. These methods make use of a quantile of the absolute values of the residual vector in determining the iterate update. We present both theoretical and empirical results that demonstrate the promise of these iterative approaches.

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