We introduce a new estimator for the vector of coefficients β in the linear model y = Xβ+z, where X has dimensions n × p with p possibly larger than n. SLOPE, short for Sorted L-One Penalized Estimation, is the solution to min b∈Rp 1 2‖y −Xb‖2`2 + λ1|b|(1) + λ2|b|(2) +...+ λp|b|(p), where λ1 ≥ λ2 ≥... ≥ λp ≥ 0 and |b|(1) ≥ |b|(2) ≥... ≥ |b|(p) are the decreasing absolute values of the entries of b. This is a convex program and we demonstrate a solution algorithm whose computational complexity is roughly comparable to that of classical `1 procedures such as the lasso. Here, the regularizer is a sorted `1 norm, which penalizes the regression coefficients according to their rank: the higher the rank—i. e. the stronger the signal—the larger t...
Sorted L-One Penalized Estimation (SLOPE) has shown the nice theoretical property as well as empiric...
Extracting relevant features from data sets where the number of observations n is much smaller then ...
We consider statistical procedures for feature selection defined by a family of regu-larization prob...
We introduce a new estimator for the vector of coefficients β in the linear model y = Xβ+z, where X ...
We introduce a new estimator for the vector of coefficients β in the linear model y = Xβ+z, where X ...
Sorted L-One Penalized Estimator (SLOPE) is a relatively new convex optimization procedure for selec...
We introduce a novel method for sparse regression and variable selection, which is inspired by moder...
<p>Sorted L-One Penalized Estimation (SLOPE; Bogdan et al. <a href="#cit0011" target="_blank">2013</...
We consider high-dimensional sparse regression problems in which we observe y = Xβ + z, where X is a...
The performances of penalized least squares approaches profoundly depend on the selection of the tun...
We introduce a novel method for sparse regression and variable selection, which is inspired by moder...
The era of machine learning features large datasets that have high dimension of features. This leads...
In this paper, we study convex optimization methods for computing the trace norm regular-ized least ...
Sorted $\ell_1$ Penalized Estimator (SLOPE) is a relatively new convex regularization method for fit...
In this paper, we study convex optimization methods for computing the trace norm regular-ized least ...
Sorted L-One Penalized Estimation (SLOPE) has shown the nice theoretical property as well as empiric...
Extracting relevant features from data sets where the number of observations n is much smaller then ...
We consider statistical procedures for feature selection defined by a family of regu-larization prob...
We introduce a new estimator for the vector of coefficients β in the linear model y = Xβ+z, where X ...
We introduce a new estimator for the vector of coefficients β in the linear model y = Xβ+z, where X ...
Sorted L-One Penalized Estimator (SLOPE) is a relatively new convex optimization procedure for selec...
We introduce a novel method for sparse regression and variable selection, which is inspired by moder...
<p>Sorted L-One Penalized Estimation (SLOPE; Bogdan et al. <a href="#cit0011" target="_blank">2013</...
We consider high-dimensional sparse regression problems in which we observe y = Xβ + z, where X is a...
The performances of penalized least squares approaches profoundly depend on the selection of the tun...
We introduce a novel method for sparse regression and variable selection, which is inspired by moder...
The era of machine learning features large datasets that have high dimension of features. This leads...
In this paper, we study convex optimization methods for computing the trace norm regular-ized least ...
Sorted $\ell_1$ Penalized Estimator (SLOPE) is a relatively new convex regularization method for fit...
In this paper, we study convex optimization methods for computing the trace norm regular-ized least ...
Sorted L-One Penalized Estimation (SLOPE) has shown the nice theoretical property as well as empiric...
Extracting relevant features from data sets where the number of observations n is much smaller then ...
We consider statistical procedures for feature selection defined by a family of regu-larization prob...