<p>In high-dimensional and/or non-parametric regression problems, regularization (or penalization) is used to control model complexity and induce desired structure. Each penalty has a weight parameter that indicates how strongly the structure corresponding to that penalty should be enforced. Typically the parameters are chosen to minimize the error on a separate validation set using a simple grid search or a gradient-free optimization method. It is more efficient to tune parameters if the gradient can be determined, but this is often difficult for problems with non-smooth penalty functions. Here we show that for many penalized regression problems, the validation loss is actually smooth almost-everywhere with respect to the penalty parameter...
Summary. Penalized likelihood methods provide a range of practical modelling tools, including spline...
Many statistical models involve three distinct groups of variables: local or nuisance parameters, gl...
We develop a new approach for feature selection via gain penalization in tree-based models. First, w...
The use of regularization, or penalization, has become increasingly common in highdimensional statis...
International audienceThis paper studies least-square regression penalized with partly smooth convex...
University of Minnesota Ph.D. dissertation. September 2008. Major: Statistics. Advisors: Geyer, Char...
We present a new family of model selection algorithms based on the resampling heuristics. It can be ...
Inspired by several recent developments in regularization theory, optimization, and sig-nal processi...
Penalized estimation has become an established tool for regularization and model selection in regres...
Satisfaction of the strict saddle property has become a standard assumption in non-convex optimizati...
It has been shown that AIC-type criteria are asymptotically efficient selectors of the tuning parame...
A new regularization method for regression models is proposed. The criterion to be minimized contain...
We study the problem of estimating high-dimensional regression models regularized by a structured sp...
Penalized estimation principle is fundamental to high-dimensional problems. In the literature, it ha...
A new regularization method for regression models is proposed. The criterion to be minimized contain...
Summary. Penalized likelihood methods provide a range of practical modelling tools, including spline...
Many statistical models involve three distinct groups of variables: local or nuisance parameters, gl...
We develop a new approach for feature selection via gain penalization in tree-based models. First, w...
The use of regularization, or penalization, has become increasingly common in highdimensional statis...
International audienceThis paper studies least-square regression penalized with partly smooth convex...
University of Minnesota Ph.D. dissertation. September 2008. Major: Statistics. Advisors: Geyer, Char...
We present a new family of model selection algorithms based on the resampling heuristics. It can be ...
Inspired by several recent developments in regularization theory, optimization, and sig-nal processi...
Penalized estimation has become an established tool for regularization and model selection in regres...
Satisfaction of the strict saddle property has become a standard assumption in non-convex optimizati...
It has been shown that AIC-type criteria are asymptotically efficient selectors of the tuning parame...
A new regularization method for regression models is proposed. The criterion to be minimized contain...
We study the problem of estimating high-dimensional regression models regularized by a structured sp...
Penalized estimation principle is fundamental to high-dimensional problems. In the literature, it ha...
A new regularization method for regression models is proposed. The criterion to be minimized contain...
Summary. Penalized likelihood methods provide a range of practical modelling tools, including spline...
Many statistical models involve three distinct groups of variables: local or nuisance parameters, gl...
We develop a new approach for feature selection via gain penalization in tree-based models. First, w...