SLOPE - Adaptive variable selection via convex optimization
Ma{\l}gorzata Bogdan, Ewout van den Berg, Chiara Sabatti, Weijie Su,, Emmanuel J. Cand\`es

TL;DR
SLOPE is a convex optimization method for variable selection in high-dimensional linear models that controls false discovery rate using a sorted L1 penalty, with efficient algorithms and strong empirical performance.
Contribution
This paper introduces SLOPE, a novel convex estimator with a sorted L1 penalty that adaptively controls FDR and has computational complexity comparable to Lasso.
Findings
SLOPE with BH thresholds provably controls FDR under orthogonal designs.
SLOPE demonstrates strong power and FDR control in simulations.
Efficient algorithms make SLOPE practical for high-dimensional data.
Abstract
We introduce a new estimator for the vector of coefficients in the linear model , where has dimensions with possibly larger than . SLOPE, short for Sorted L-One Penalized Estimation, is the solution to \[\min_{b\in\mathbb{R}^p}\frac{1}{2}\Vert y-Xb\Vert _{\ell_2}^2+\lambda_1\vert b\vert _{(1)}+\lambda_2\vert b\vert_{(2)}+\cdots+\lambda_p\vert b\vert_{(p)},\] where and are the decreasing absolute values of the entries of . This is a convex program and we demonstrate a solution algorithm whose computational complexity is roughly comparable to that of classical procedures such as the Lasso. Here, the regularizer is a sorted norm, which penalizes the regression coefficients according to their rank: the higher…
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