Leveraging Joint-Diagonalization in Transform-Learning NMF
Machine Learning
2022-09-23 v3 Signal Processing
Abstract
Non-negative matrix factorization with transform learning (TL-NMF) is a recent idea that aims at learning data representations suited to NMF. In this work, we relate TL-NMF to the classical matrix joint-diagonalization (JD) problem. We show that, when the number of data realizations is sufficiently large, TL-NMF can be replaced by a two-step approach -- termed as JD+NMF -- that estimates the transform through JD, prior to NMF computation. In contrast, we found that when the number of data realizations is limited, not only is JD+NMF no longer equivalent to TL-NMF, but the inherent low-rank constraint of TL-NMF turns out to be an essential ingredient to learn meaningful transforms for NMF.
Keywords
Cite
@article{arxiv.2112.05664,
title = {Leveraging Joint-Diagonalization in Transform-Learning NMF},
author = {Sixin Zhang and Emmanuel Soubies and Cédric Févotte},
journal= {arXiv preprint arXiv:2112.05664},
year = {2022}
}