Phase Transitions for High-Dimensional Joint Support Recovery

Abstract

We consider the following instance of transfer learning: given a pair of regression problems, suppose that the regression coefficients share a partially common support, parameterized by the overlap fraction $\overlap$ between the two supports. This set-up suggests the use of $1, \infty$-regularized linear regression for recovering the support sets of both regression vectors. Our main contribution is to provide a sharp characterization of the sample complexity of this $1,\infty$ relaxation, exactly pinning down the minimal sample size $n$ required for joint support recovery as a function of the model dimension $\pdim$, support size $\spindex$ and overlap $\overlap \in [0,1]$. For measurement matrices drawn from standard Gaussian ensembles, we prove that the joint $1,\infty$-regularized method undergoes a phase transition characterized by order parameter $\orpar(\numobs, \pdim, \spindex, \overlap) = \numobs{(4 - 3 \overlap) s \log(p-(2-\overlap)s)}$. More precisely, the probability of successfully recovering both supports converges to $1$ for scalings such that $\orpar > 1$, and converges to $0$ to scalings for which $\orpar < 1$. An implication of this threshold is that use of $1, \infty$-regularization leads to gains in sample complexity if the overlap parameter is large enough ($\overlap > 2/3$), but performs worse than a naive approach if $\overlap < 2/3$. We illustrate the close agreement between these theoretical predictions, and the actual behavior in simulations. Thus, our results illustrate both the benefits and dangers associated with block-$1,\infty$ regularization in high-dimensional inference.

Cite

Text

Negahban and Wainwright. "Phase Transitions for High-Dimensional Joint Support Recovery." Neural Information Processing Systems, 2008.

Markdown

[Negahban and Wainwright. "Phase Transitions for High-Dimensional Joint Support Recovery." Neural Information Processing Systems, 2008.](https://mlanthology.org/neurips/2008/negahban2008neurips-phase/)

BibTeX

@inproceedings{negahban2008neurips-phase,
  title     = {{Phase Transitions for High-Dimensional Joint Support Recovery}},
  author    = {Negahban, Sahand and Wainwright, Martin J.},
  booktitle = {Neural Information Processing Systems},
  year      = {2008},
  pages     = {1161-1168},
  url       = {https://mlanthology.org/neurips/2008/negahban2008neurips-phase/}
}