Optimization with Sparsity-Inducing Penalties
Abstract
Sparse estimation methods are aimed at using or obtaining parsimonious representations of data or models. They were first dedicated to linear variable selection but numerous extensions have now emerged such as structured sparsity or kernel selection. It turns out that many of the related estimation problems can be cast as convex optimization problems by regularizing the empirical risk with appropriate nonsmooth norms. The goal of this monograph is to present from a general perspective optimization tools and techniques dedicated to such sparsity-inducing penalties. We cover proximal methods, block-coordinate descent, reweighted l2-penalized techniques, working-set and homotopy methods, as well as non-convex formulations and extensions, and provide an extensive set of experiments to compare various algorithms from a computational point of view.
Cite
Text
Bach et al. "Optimization with Sparsity-Inducing Penalties." Foundations and Trends in Machine Learning, 2012. doi:10.1561/2200000015Markdown
[Bach et al. "Optimization with Sparsity-Inducing Penalties." Foundations and Trends in Machine Learning, 2012.](https://mlanthology.org/ftml/2012/bach2012ftml-optimization/) doi:10.1561/2200000015BibTeX
@article{bach2012ftml-optimization,
title = {{Optimization with Sparsity-Inducing Penalties}},
author = {Bach, Francis R. and Jenatton, Rodolphe and Mairal, Julien and Obozinski, Guillaume},
journal = {Foundations and Trends in Machine Learning},
year = {2012},
pages = {1-106},
doi = {10.1561/2200000015},
volume = {4},
url = {https://mlanthology.org/ftml/2012/bach2012ftml-optimization/}
}