We investigate the problem of model selection for learning algorithms depending on a continuous parameter. We propose a model selection procedure based on a worst-case analysis and on a data-independent choice of the parameter. For the regularized least-squares algorithm we bound the generalization error of the solution by a quantity depending on a few known constants and we show that the corresponding model selection procedure reduces to solving a bias-variance problem. Under suitable smoothness conditions on the regression function, we estimate the optimal parameter as a function of the number of data and we prove that this choice ensures consistency of the algorithm
The lasso algorithm for variable selection in linear models, intro- duced by Tibshirani, works by im...
Many works related learning from examples to regularization techniques for inverse problems, emphasi...
The lasso algorithm for variable selection in linear models, introduced by Tibshirani, works by impo...
We investigate the problem of model selection for learning algorithms depending on a continuous para...
We survey a number of recent results concerning the behaviour of algorithms for learning classifiers...
AbstractA standard assumption in theoretical study of learning algorithms for regression is uniform ...
We develop a theoretical analysis of the generalization perfor- mances of regularized least-squares ...
In this work we are interested in the problems of supervised learning and variable selection when th...
We develop a theoretical analysis of the generalization perfor-mances of regularized least-squares a...
AbstractWe survey a number of recent results concerning the behaviour of algorithms for learning cla...
This paper presents an approach to model selection for regularized least-squares on reproducing kern...
International audienceThis paper studies least-square regression penalized with partly smooth convex...
CBCL-252 This paper presents an approach to model selection for regularized least-squares on reprodu...
Model selection and sparse recovery are two important problems for which many regularization methods...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
The lasso algorithm for variable selection in linear models, intro- duced by Tibshirani, works by im...
Many works related learning from examples to regularization techniques for inverse problems, emphasi...
The lasso algorithm for variable selection in linear models, introduced by Tibshirani, works by impo...
We investigate the problem of model selection for learning algorithms depending on a continuous para...
We survey a number of recent results concerning the behaviour of algorithms for learning classifiers...
AbstractA standard assumption in theoretical study of learning algorithms for regression is uniform ...
We develop a theoretical analysis of the generalization perfor- mances of regularized least-squares ...
In this work we are interested in the problems of supervised learning and variable selection when th...
We develop a theoretical analysis of the generalization perfor-mances of regularized least-squares a...
AbstractWe survey a number of recent results concerning the behaviour of algorithms for learning cla...
This paper presents an approach to model selection for regularized least-squares on reproducing kern...
International audienceThis paper studies least-square regression penalized with partly smooth convex...
CBCL-252 This paper presents an approach to model selection for regularized least-squares on reprodu...
Model selection and sparse recovery are two important problems for which many regularization methods...
How can we select the best performing data-driven model? How can we rigorously estimate its generali...
The lasso algorithm for variable selection in linear models, intro- duced by Tibshirani, works by im...
Many works related learning from examples to regularization techniques for inverse problems, emphasi...
The lasso algorithm for variable selection in linear models, introduced by Tibshirani, works by impo...