We investigate structured sparsity methods for variable selection in regression problems where the target depends nonlinearly on the inputs. We focus on general nonlinear functions not limiting a priori the function space to additive models. We propose two new regularizers based on partial derivatives as nonlinear equivalents of group lasso and elastic net. We formulate the problem within the framework of learning in reproducing kernel Hilbert spaces and show how the variational problem can be reformulated into a more practical finite dimensional equivalent. We develop a new algorithm derived from the ADMM principles that relies solely on closed forms of the proximal operators. We explore the empirical properties of our new algorithm for No...
A new algorithm which preselects variables in nonlinear system models is introduced by converting t...
In generalized linear regression problems with an abundant number of features, lasso-type regulariza...
Abstract: High dimensional data are nowadays encountered in various branches of science. Variable se...
We investigate structured sparsity methods for variable selection in regression problems where the t...
In this work we are interested in the problems of supervised learning and variable selection when th...
In this paper we consider a regularization approach to variable selection when the regression functi...
In this work we are interested in the problems of supervised learning and variable selection when th...
International audienceWe consider the empirical risk minimization problem for linear supervised lear...
In this thesis we discuss machine learning methods performing automated variable selection for learn...
Applying nonparametric variable selection criteria in nonlinear regression models generally requires...
We develop a simple and unified framework for nonlinear variable selection that incorporates uncerta...
We propose a new method for input variable selection in nonlinear regression. The method is embedded...
We propose a new method for input variable selection in nonlinear regression. The method is embedded...
We consider the problems of variable selection and estimation in nonparametric additive regression m...
We study the problem of exact recovery of an unknown multivariate function f observed in the continu...
A new algorithm which preselects variables in nonlinear system models is introduced by converting t...
In generalized linear regression problems with an abundant number of features, lasso-type regulariza...
Abstract: High dimensional data are nowadays encountered in various branches of science. Variable se...
We investigate structured sparsity methods for variable selection in regression problems where the t...
In this work we are interested in the problems of supervised learning and variable selection when th...
In this paper we consider a regularization approach to variable selection when the regression functi...
In this work we are interested in the problems of supervised learning and variable selection when th...
International audienceWe consider the empirical risk minimization problem for linear supervised lear...
In this thesis we discuss machine learning methods performing automated variable selection for learn...
Applying nonparametric variable selection criteria in nonlinear regression models generally requires...
We develop a simple and unified framework for nonlinear variable selection that incorporates uncerta...
We propose a new method for input variable selection in nonlinear regression. The method is embedded...
We propose a new method for input variable selection in nonlinear regression. The method is embedded...
We consider the problems of variable selection and estimation in nonparametric additive regression m...
We study the problem of exact recovery of an unknown multivariate function f observed in the continu...
A new algorithm which preselects variables in nonlinear system models is introduced by converting t...
In generalized linear regression problems with an abundant number of features, lasso-type regulariza...
Abstract: High dimensional data are nowadays encountered in various branches of science. Variable se...