Continuous dictionaries meet low-rank tensor approximations
Information Theory
2020-09-15 v1 math.IT
Abstract
In this short paper we bridge two seemingly unrelated sparse approximation topics: continuous sparse coding and low-rank approximations. We show that for a specific choice of continuous dictionary, linear systems with nuclear-norm regularization have the same solutions as a BLasso problem. Although this fact was already partially understood in the matrix case, we further show that for tensor data, using BLasso solvers for the low-rank approximation problem leads to a new branch of optimization methods yet vastly unexplored. In particular, the proposed Frank-Wolfe algorithm is showcased on an automatic tensor rank selection problem.
Cite
@article{arxiv.2009.06340,
title = {Continuous dictionaries meet low-rank tensor approximations},
author = {Clement Elvira and Jeremy E. Cohen and Cedric Herzet and Remi Gribonval},
journal= {arXiv preprint arXiv:2009.06340},
year = {2020}
}
Comments
in Proceedings of iTWIST'20, Paper-ID: 28, Nantes, France, December, 2-4, 2020