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On the $\ell_1-\ell_q$ Regularized Regression

Machine Learning 2008-02-12 v1 Statistics Theory Statistics Theory

Abstract

In this paper we consider the problem of grouped variable selection in high-dimensional regression using 1q\ell_1-\ell_q regularization (1q1\leq q \leq \infty), which can be viewed as a natural generalization of the 12\ell_1-\ell_2 regularization (the group Lasso). The key condition is that the dimensionality pnp_n can increase much faster than the sample size nn, i.e. pnnp_n \gg n (in our case pnp_n is the number of groups), but the number of relevant groups is small. The main conclusion is that many good properties from 1\ell_1-regularization (Lasso) naturally carry on to the 1q\ell_1-\ell_q cases (1q1 \leq q \leq \infty), even if the number of variables within each group also increases with the sample size. With fixed design, we show that the whole family of estimators are both estimation consistent and variable selection consistent under different conditions. We also show the persistency result with random design under a much weaker condition. These results provide a unified treatment for the whole family of estimators ranging from q=1q=1 (Lasso) to q=q=\infty (iCAP), with q=2q=2 (group Lasso)as a special case. When there is no group structure available, all the analysis reduces to the current results of the Lasso estimator (q=1q=1).

Keywords

Cite

@article{arxiv.0802.1517,
  title  = {On the $\ell_1-\ell_q$ Regularized Regression},
  author = {Han Liu and Jian Zhang},
  journal= {arXiv preprint arXiv:0802.1517},
  year   = {2008}
}

Comments

25 pages

R2 v1 2026-06-21T10:11:39.220Z