English

MIP-BOOST: Efficient and Effective $L_0$ Feature Selection for Linear Regression

Methodology 2019-10-01 v3

Abstract

Recent advances in mathematical programming have made Mixed Integer Optimization a competitive alternative to popular regularization methods for selecting features in regression problems. The approach exhibits unquestionable foundational appeal and versatility, but also poses important challenges. Here we propose MIP-BOOST, a revision of standard Mixed Integer Programming feature selection that reduces the computational burden of tuning the critical sparsity bound parameter and improves performance in the presence of feature collinearity and of signals that vary in nature and strength. The final outcome is a more efficient and effective L0L_0 Feature Selection method for applications of realistic size and complexity, grounded on rigorous cross-validation tuning and exact optimization of the associated Mixed Integer Program. Computational viability and improved performance in realistic scenarios is achieved through three independent but synergistic proposals.

Keywords

Cite

@article{arxiv.1808.02526,
  title  = {MIP-BOOST: Efficient and Effective $L_0$ Feature Selection for Linear Regression},
  author = {Ana Kenney and Francesca Chiaromonte and Giovanni Felici},
  journal= {arXiv preprint arXiv:1808.02526},
  year   = {2019}
}

Comments

This work has been presented at JSM 2018 (Vancouver, Canada), ISNPS 2018 (Salerno, Italy), and various other conferences

R2 v1 2026-06-23T03:27:15.842Z