In a typical machine learning problem one has to build a model from a finite training set which is able to generalize the properties characterizing the examples of the training set to new examples. The model has to reflect as much as possible the set of trainingexamples but, especially in real-world problems in which the data are often corrupted by different sources of noise, it has to avoid a too strict dependence on the training examples themselves. Recent studies on the relationship between this kind of learning problem and the regularization theory for ill-posed inverse problems have given rise to new regularized learning algorithms. In this paper we recall some of these learning methods and we propose an accelerated version of the clas...
Linear inverse problems with discrete data are equivalent to the estimation of the continuous-time i...
Regularization addresses the ill-posedness of the training problem in machine learning or the recons...
The MEG inverse problem refers to the reconstruction of the neural activity of the brain from magnet...
In a typical machine learning problem one has to build a model from a finite training set which is a...
In several biomedical and bioinformatics applications, one is faced with regression problems that ca...
In several biomedical and bioinformatics applications, one is faced with regression problems that ca...
In several biomedical fields, researchers are faced with regression problems that can be stated as S...
AbstractMany works have shown strong connections between learning and regularization techniques for ...
In this thesis on data-driven methods in inverse problems we introduce several new methods to solve ...
Many works related learning from examples to regularization techniques for inverse prob- lems, empha...
Many works related learning from examples to regularization techniques for inverse problems, emphasi...
In this paper we discuss a relation between Learning Theory and Regularization of linear ill-posed i...
Modern data-sets are often huge, possibly high-dimensional, and require complex non-linear parameter...
Inverse Problems in medical imaging and computer vision are traditionally solved using purely model-...
International audienceClassical methods for inverse problems are mainly based on regularization theo...
Linear inverse problems with discrete data are equivalent to the estimation of the continuous-time i...
Regularization addresses the ill-posedness of the training problem in machine learning or the recons...
The MEG inverse problem refers to the reconstruction of the neural activity of the brain from magnet...
In a typical machine learning problem one has to build a model from a finite training set which is a...
In several biomedical and bioinformatics applications, one is faced with regression problems that ca...
In several biomedical and bioinformatics applications, one is faced with regression problems that ca...
In several biomedical fields, researchers are faced with regression problems that can be stated as S...
AbstractMany works have shown strong connections between learning and regularization techniques for ...
In this thesis on data-driven methods in inverse problems we introduce several new methods to solve ...
Many works related learning from examples to regularization techniques for inverse prob- lems, empha...
Many works related learning from examples to regularization techniques for inverse problems, emphasi...
In this paper we discuss a relation between Learning Theory and Regularization of linear ill-posed i...
Modern data-sets are often huge, possibly high-dimensional, and require complex non-linear parameter...
Inverse Problems in medical imaging and computer vision are traditionally solved using purely model-...
International audienceClassical methods for inverse problems are mainly based on regularization theo...
Linear inverse problems with discrete data are equivalent to the estimation of the continuous-time i...
Regularization addresses the ill-posedness of the training problem in machine learning or the recons...
The MEG inverse problem refers to the reconstruction of the neural activity of the brain from magnet...