Near-optimal hierarchical matrix approximation from matrix-vector products
Tyler Chen, Feyza Duman Keles, Diana Halikias, Cameron Musco,, Christopher Musco, David Persson

TL;DR
This paper presents a randomized algorithm for near-optimal hierarchical matrix approximation using only matrix-vector products, with proven theoretical guarantees and efficient computational complexity.
Contribution
It introduces the first matrix-vector query algorithm with worst-case guarantees for hierarchical matrix approximation, including a new perturbation bound and a novel matrix sketching method.
Findings
Achieves near-optimal approximation with O(k log^4(n)/ε^3) matrix-vector products.
Provides lower bounds showing query complexity limits.
Demonstrates stability of the Generalized Nyström method with noisy data.
Abstract
We describe a randomized algorithm for producing a near-optimal hierarchical off-diagonal low-rank (HODLR) approximation to an matrix , accessible only though matrix-vector products with and . We prove that, for the rank- HODLR approximation problem, our method achieves a -optimal approximation in expected Frobenius norm using matrix-vector products. In particular, the algorithm obtains a -optimal approximation with matrix-vector products, and for any constant , an -optimal approximation with matrix-vector products. Apart from matrix-vector products, the additional computational cost of our method is just . We complement the upper bound with a lower bound, which shows…
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Taxonomy
TopicsMatrix Theory and Algorithms · Statistical and numerical algorithms
