$\ell_p$-sphere covering and approximating nuclear $p$-norm
Jiewen Guan, Simai He, Bo Jiang, Zhening Li

TL;DR
This paper develops approximation algorithms for tensor and matrix nuclear p-norms using sphere covering techniques, achieving bounds matching their dual spectral norms, with applications in optimization and machine learning.
Contribution
It introduces novel sphere covering methods and polynomial-time algorithms for approximating nuclear p-norms, especially for matrices with p>2, advancing computational tools in tensor analysis.
Findings
First polynomial-time algorithm for matrix nuclear p-norm with p>2.
Sphere covering techniques enable approximation bounds matching dual spectral norms.
Applications demonstrated in tensor and matrix norm computations.
Abstract
The spectral -norm and nuclear -norm of matrices and tensors appear in various applications albeit both are NP-hard to compute. The former sets a foundation of -sphere constrained polynomial optimization problems and the latter has been found in many rank minimization problems in machine learning. We study approximation algorithms of the tensor nuclear -norm with an aim to establish the approximation bound matching the best one of its dual norm, the tensor spectral -norm. Driven by the application of sphere covering to approximate both tensor spectral and nuclear norms (), we propose several types of hitting sets that approximately represent -sphere with adjustable parameters for different levels of approximations and cardinalities, providing an independent toolbox for decision making on -spheres. Using the idea in robust optimization and…
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Taxonomy
TopicsTensor decomposition and applications · Advanced Optimization Algorithms Research · Matrix Theory and Algorithms
