English

Exclusive Group Lasso for Structured Variable Selection

Machine Learning 2023-11-03 v2 Signal Processing Machine Learning

Abstract

A structured variable selection problem is considered in which the covariates, divided into predefined groups, activate according to sparse patterns with few nonzero entries per group. Capitalizing on the concept of atomic norm, a composite norm can be properly designed to promote such exclusive group sparsity patterns. The resulting norm lends itself to efficient and flexible regularized optimization algorithms for support recovery, like the proximal algorithm. Moreover, an active set algorithm is proposed that builds the solution by successively including structure atoms into the estimated support. It is also shown that such an algorithm can be tailored to match more rigid structures than plain exclusive group sparsity. Asymptotic consistency analysis (with both the number of parameters as well as the number of groups growing with the observation size) establishes the effectiveness of the proposed solution in terms of signed support recovery under conventional assumptions. Finally, a set of numerical simulations further corroborates the results.

Keywords

Cite

@article{arxiv.2108.10284,
  title  = {Exclusive Group Lasso for Structured Variable Selection},
  author = {David Gregoratti and Xavier Mestre and Carlos Buelga},
  journal= {arXiv preprint arXiv:2108.10284},
  year   = {2023}
}

Comments

36 pages, 2 figures. Not submitted for publication. New license