The Dantzig Selector: Statistical Estimation When p Is Much Larger than n

Citation
Candes, Emmanuel et Tao,terence, The Dantzig Selector: Statistical Estimation When p Is Much Larger than n, Annals of statistics , 35(6), 2007, pp. 2313-2351
Journal title
ISSN journal
00905364
Volume
35
Issue
6
Year of publication
2007
Pages
2313 - 2351
Database
ACNP
SICI code
Abstract
In many important statistical applications, the number of variables or parameters p is much larger than the number of observations n. Suppose then that we have observations y = X. + z, where $\beta \in {\bf R}^{p}$ is a parameter vector of interest, X is a data matrix with possibly far fewer rows than columns, n « p, and the $z_{i}\text{'}{\rm s}$ are i.i.d. N(0, .²). Is it possible to estimate . reliably based on the noisy data y? To estimate ., we introduce a new estimator-we call it the Dantzig selector-which is a solution to the l.-regularization problem $\underset \tilde{\beta}\in {\bf R}^{p}\to{{\rm min}}\|\tilde{\beta}\|_{\ell _{1}}$ subject to $\|X^{\ast }r\|_{\ell _{\infty}}\leq (1+t^{-1})\sqrt{2\,{\rm log}\,p}\cdot \sigma $, where r is the residual vector $y-X\tilde{\beta}$ and t is a positive scalar. We show that if X obeys a uniform uncertainty principle (with unit-normed columns) and if the true parameter vector . is sufficiently sparse (which here roughly guarantees that the model is identifiable), then with very large probability, $\|\hat{\beta}-\beta \|_{\ell _{2}}^{2}\leq C^{2}\cdot 2\,{\rm log}\,p\cdot \left(\sigma ^{2}+\sum_{i}{\rm min}(\beta _{i}^{2},\sigma ^{2})\right)$. Our results are nonasymptotic and we give values for the constant C. Even though n may be much smaller than p, our estimator achieves a loss within a logarithmic factor of the ideal mean squared error one would achieve with an oracle which would supply perfect information about which coordinates are nonzero, and which were above the noise level. In multivariate regression and from a model selection viewpoint, our result says that it is possible nearly to select the best subset of variables by solving a very simple convex program, which, in fact, can easily be recast as a convenient linear program (LP).