Estimating the matrix $p \rightarrow q$ norm
November 13, 2023 Β· Declared Dead Β· π SIAM Journal on Matrix Analysis and Applications
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Authors
Larry Guth, Dominique Maldague, John Urschel
arXiv ID
2311.07677
Category
cs.DS: Data Structures & Algorithms
Cross-listed
math.FA
Citations
1
Venue
SIAM Journal on Matrix Analysis and Applications
Last Checked
4 months ago
Abstract
The matrix $p \rightarrow q$ norm is a fundamental quantity appearing in a variety of areas of mathematics. This quantity is known to be efficiently computable in only a few special cases. The best known algorithms for approximately computing this quantity with theoretical guarantees essentially consist of computing the $p\to q$ norm for $p,q$ where this quantity can be computed exactly or up to a constant, and applying interpolation. We analyze the matrix $2 \to q$ norm problem and provide an improved approximation algorithm via a simple argument involving the rows of a given matrix. For example, we improve the best-known $2\to 4$ norm approximation from $m^{1/8}$ to $m^{1/12}$. This insight for the $2\to q$ norm improves the best known $p \to q$ approximation algorithm for the region $p \le 2 \le q$, and leads to an overall improvement in the best-known approximation for $p \to q$ norms from $m^{25/128}$ to $m^{3 - 2 \sqrt{2}}$.
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