English

Optimal designs for Lasso and Dantzig selector using Expander Codes

Statistics Theory 2015-03-17 v6 Information Theory math.IT Probability Methodology Machine Learning Statistics Theory

Abstract

We investigate the high-dimensional regression problem using adjacency matrices of unbalanced expander graphs. In this frame, we prove that the 2\ell_{2}-prediction error and the 1\ell_{1}-risk of the lasso and the Dantzig selector are optimal up to an explicit multiplicative constant. Thus we can estimate a high-dimensional target vector with an error term similar to the one obtained in a situation where one knows the support of the largest coordinates in advance. Moreover, we show that these design matrices have an explicit restricted eigenvalue. Precisely, they satisfy the restricted eigenvalue assumption and the compatibility condition with an explicit constant. Eventually, we capitalize on the recent construction of unbalanced expander graphs due to Guruswami, Umans, and Vadhan, to provide a deterministic polynomial time construction of these design matrices.

Keywords

Cite

@article{arxiv.1010.2457,
  title  = {Optimal designs for Lasso and Dantzig selector using Expander Codes},
  author = {Yohann de Castro},
  journal= {arXiv preprint arXiv:1010.2457},
  year   = {2015}
}

Comments

Last version with optimal bounds

R2 v1 2026-06-21T16:27:28.186Z