New Perspectives on K-Support and Cluster Norms
Abstract
We study a regularizer which is defined as a parameterized infimum of quadratics, and which we call the box-norm. We show that the $k$-support norm, a regularizer proposed by Argyriou et al. (2012) for sparse vector prediction problems, belongs to this family, and the box-norm can be generated as a perturbation of the former. We derive an improved algorithm to compute the proximity operator of the squared box-norm, and we provide a method to compute the norm. We extend the norms to matrices, introducing the spectral $k$-support norm and spectral box-norm. We note that the spectral box-norm is essentially equivalent to the cluster norm, a multitask learning regularizer introduced by Jacob et al. (2009a), and which in turn can be interpreted as a perturbation of the spectral $k$-support norm. Centering the norm is important for multitask learning and we also provide a method to use centered versions of the norms as regularizers. Numerical experiments indicate that the spectral $k$-support and box-norms and their centered variants provide state of the art performance in matrix completion and multitask learning problems respectively.
Cite
Text
McDonald et al. "New Perspectives on K-Support and Cluster Norms." Journal of Machine Learning Research, 2016.Markdown
[McDonald et al. "New Perspectives on K-Support and Cluster Norms." Journal of Machine Learning Research, 2016.](https://mlanthology.org/jmlr/2016/mcdonald2016jmlr-new/)BibTeX
@article{mcdonald2016jmlr-new,
title = {{New Perspectives on K-Support and Cluster Norms}},
author = {McDonald, Andrew M. and Pontil, Massimiliano and Stamos, Dimitris},
journal = {Journal of Machine Learning Research},
year = {2016},
pages = {1-38},
volume = {17},
url = {https://mlanthology.org/jmlr/2016/mcdonald2016jmlr-new/}
}