Fine-grained Analysis and Faster Algorithms for Iteratively Solving Linear Systems
May 09, 2024 Β· Declared Dead Β· π arXiv.org
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Authors
MichaΕ DereziΕski, Daniel LeJeune, Deanna Needell, Elizaveta Rebrova
arXiv ID
2405.05818
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.LG,
math.NA,
math.OC
Citations
13
Venue
arXiv.org
Last Checked
4 months ago
Abstract
Despite being a key bottleneck in many machine learning tasks, the cost of solving large linear systems has proven challenging to quantify due to problem-dependent quantities such as condition numbers. To tackle this, we consider a fine-grained notion of complexity for solving linear systems, which is motivated by applications where the data exhibits low-dimensional structure, including spiked covariance models and kernel machines, and when the linear system is explicitly regularized, such as ridge regression. Concretely, let $ΞΊ_\ell$ be the ratio between the $\ell$th largest and the smallest singular value of $n\times n$ matrix $A$. We give a stochastic algorithm based on the Sketch-and-Project paradigm, that solves the linear system $Ax = b$, that is, finds $\bar{x}$ such that $\|A\bar{x} - b\| \le Ξ΅\|b\|$, in time $\bar O(ΞΊ_\ell\cdot n^2\log 1/Ξ΅)$, for any $\ell = O(n^{0.729})$. This is a direct improvement over preconditioned conjugate gradient, and it provides a stronger separation between stochastic linear solvers and algorithms accessing $A$ only through matrix-vector products. Our main technical contribution is the new analysis of the first and second moments of the random projection matrix that arises in Sketch-and-Project.
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