International audienceWe study regularized regression problems where the regularizer is a proper, lower-semicontinuous, convex and partly smooth function relative to a Riemannian submanifold. This encompasses several popular examples including the Lasso, the group Lasso, the max and nuclear norms, as well as their composition with linear operators (e.g., total variation or fused Lasso). Our main sensitivity analysis result shows that the predictor moves locally stably along the same active submanifold as the observations undergo small perturbations. This plays a pivotal role in getting a closed-form expression for the divergence of the predictor w.r.t. observations. We also show that, for many regularizers, including polyhedral ones or the ...
International audienceThis paper studies least-square regression penalized with partly smooth convex...
International audienceThis paper studies least-square regression penalized with partly smooth convex...
International audienceThis paper studies least-square regression penalized with partly smooth convex...
International audienceWe study regularized regression problems where the regularizer is a proper, lo...
International audienceWe study regularized regression problems where the regularizer is a proper, lo...
International audienceWe study regularized regression problems where the regularizer is a proper, lo...
International audienceWe study regularized regression problems where the regularizer is a proper, lo...
International audienceWe study regularized regression problems where the regularizer is a proper, lo...
We study regularized regression problems where the regularizer is a proper, lower-semicontinuous, co...
We study regularized regression problems where the regularizer is a proper, lower-semicontinuous, co...
We study regularized regression problems where the regularizer is a proper, lower-semicontinuous, co...
Abstract In this paper, we are concerned with regularized regression prob-lems where the prior penal...
Regularization aims to improve prediction performance by trading an increase in training error for b...
Regularization aims to improve prediction performance by trading an increase in training error for b...
International audienceThis paper studies least-square regression penalized with partly smooth convex...
International audienceThis paper studies least-square regression penalized with partly smooth convex...
International audienceThis paper studies least-square regression penalized with partly smooth convex...
International audienceThis paper studies least-square regression penalized with partly smooth convex...
International audienceWe study regularized regression problems where the regularizer is a proper, lo...
International audienceWe study regularized regression problems where the regularizer is a proper, lo...
International audienceWe study regularized regression problems where the regularizer is a proper, lo...
International audienceWe study regularized regression problems where the regularizer is a proper, lo...
International audienceWe study regularized regression problems where the regularizer is a proper, lo...
We study regularized regression problems where the regularizer is a proper, lower-semicontinuous, co...
We study regularized regression problems where the regularizer is a proper, lower-semicontinuous, co...
We study regularized regression problems where the regularizer is a proper, lower-semicontinuous, co...
Abstract In this paper, we are concerned with regularized regression prob-lems where the prior penal...
Regularization aims to improve prediction performance by trading an increase in training error for b...
Regularization aims to improve prediction performance by trading an increase in training error for b...
International audienceThis paper studies least-square regression penalized with partly smooth convex...
International audienceThis paper studies least-square regression penalized with partly smooth convex...
International audienceThis paper studies least-square regression penalized with partly smooth convex...
International audienceThis paper studies least-square regression penalized with partly smooth convex...