Simple and practical algorithms for $\ell_p$-norm low-rank approximation
Machine Learning
2018-05-25 v1 Information Theory
Numerical Analysis
math.IT
Optimization and Control
Machine Learning
Abstract
We propose practical algorithms for entrywise -norm low-rank approximation, for or . The proposed framework, which is non-convex and gradient-based, is easy to implement and typically attains better approximations, faster, than state of the art. From a theoretical standpoint, we show that the proposed scheme can attain -OPT approximations. Our algorithms are not hyperparameter-free: they achieve the desiderata only assuming algorithm's hyperparameters are known a priori---or are at least approximable. I.e., our theory indicates what problem quantities need to be known, in order to get a good solution within polynomial time, and does not contradict to recent inapproximabilty results, as in [46].
Cite
@article{arxiv.1805.09464,
title = {Simple and practical algorithms for $\ell_p$-norm low-rank approximation},
author = {Anastasios Kyrillidis},
journal= {arXiv preprint arXiv:1805.09464},
year = {2018}
}
Comments
16 pages, 11 figures, to appear in UAI 2018