We study the problem of estimating high-dimensional regression models regularized by a structured sparsity-inducing penalty that encodes prior structural information on either the input or output variables. We consider two widely adopted types of penalties of this kind as motivating examples: (1) the general overlapping-group-lasso penalty, generalized from the group-lasso penalty; and (2) the graph-guided-fused-lasso penalty, generalized from the fused-lasso penalty. For both types of penalties, due to their nonseparability and nonsmoothness, developing an efficient optimization method remains a challenging problem. In this paper we propose a general optimization approach, the smoothing proximal gradient (SPG) method, which can solve struc...
We adapt the alternating linearization method for proximal decomposition to structured regularizatio...
and to lend or sell such copies for private, scholarly or scientific research purposes only. Where t...
<p>In high-dimensional and/or non-parametric regression problems, regularization (or penalization) i...
<p>We study the problem of estimating high-dimensional regression models regularized by a structured...
Abstract. Proximal methods have recently been shown to provide ef-fective optimization procedures to...
Sparse modeling has been highly successful in many real-world applications. While a lot of interests...
Sparse modeling has been highly successful in many realworld applications. While a lot of interests ...
In many learning tasks with structural properties, structured sparse modeling usually leads to bette...
Non-convex sparsity-inducing penalties outperform their convex counterparts, but generally sacrifice...
International audienceredictive models can be used on high-dimensional brain images to deco...
We consider a regularized least squares problem, with regularization by structured sparsity-inducing...
We study the problem of learning a sparse linear regression vector under additional conditions on th...
Structured sparsity is an important modeling tool that expands the applicability of convex formulati...
It is a common practice to approximate “complicated ” functions with more friendly ones. In large-sc...
Sparse estimation methods are aimed at using or obtaining parsimo-nious representations of data or m...
We adapt the alternating linearization method for proximal decomposition to structured regularizatio...
and to lend or sell such copies for private, scholarly or scientific research purposes only. Where t...
<p>In high-dimensional and/or non-parametric regression problems, regularization (or penalization) i...
<p>We study the problem of estimating high-dimensional regression models regularized by a structured...
Abstract. Proximal methods have recently been shown to provide ef-fective optimization procedures to...
Sparse modeling has been highly successful in many real-world applications. While a lot of interests...
Sparse modeling has been highly successful in many realworld applications. While a lot of interests ...
In many learning tasks with structural properties, structured sparse modeling usually leads to bette...
Non-convex sparsity-inducing penalties outperform their convex counterparts, but generally sacrifice...
International audienceredictive models can be used on high-dimensional brain images to deco...
We consider a regularized least squares problem, with regularization by structured sparsity-inducing...
We study the problem of learning a sparse linear regression vector under additional conditions on th...
Structured sparsity is an important modeling tool that expands the applicability of convex formulati...
It is a common practice to approximate “complicated ” functions with more friendly ones. In large-sc...
Sparse estimation methods are aimed at using or obtaining parsimo-nious representations of data or m...
We adapt the alternating linearization method for proximal decomposition to structured regularizatio...
and to lend or sell such copies for private, scholarly or scientific research purposes only. Where t...
<p>In high-dimensional and/or non-parametric regression problems, regularization (or penalization) i...