The Dantzig selector: Statistical estimation when $p$ is much larger than $n$
CECandes, EmmanuelTTTao, Terence
Indexed inarxiv
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 $y=X\beta+z$, where $\beta\in\mathbf{R}^p$ is a parameter vector of interest, $X$ is a data matrix with possibly far fewer rows than columns, $n\ll p$, and the $z_i$'s are i.i.d. $N(0,\sigma^2)$. Is it possible to estimate $\beta$ reliably based on the noisy data $y$? To estimate $\beta$, we introduce a new estimator--we call it the Dantzig selector--which is a solution to the $\ell_1$-regularization problem \[\min_{\tilde{\b eta}\in\mathbf{R}^p}\|\tilde{\beta}\|_{\ell_1}\quad subject to\quad…
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Authors
2- CECandes, EmmanuelCorresponding
- TTTao, Terence
Topics & keywords
Topics
Keywords
- Estimator
- Logarithm
- Simple (philosophy)
- Constant (computer programming)
- Matrix (chemical analysis)
- Regular polygon
- Residual
- Least absolute deviations
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