Supervised learning is investigated, when the data are represented not only by labeled points but also labeled regions of the input space. In the limit case, such regions degenerate to single points and the proposed approach changes back to the classical learning context. The adopted framework entails the minimization of a functional obtained by introducing a loss function that involves such regions. An additive regularization term is expressed via differential operators that model the smoothness properties of the desired input/output relationship. Representer theorems are given, proving that the optimization problem associated to learning from labeled regions has a unique solution, which takes on the form of a linear combination of kernel ...
We propose a novel method of dimensionality reduction for supervised learning. Given a regression or...
Abstract Supervised learning accounts for a lot of research activity in machine learning and many su...
We consider the general problem of learning from labeled and unlabeled data, which is often called s...
Supervised learning is investigated, when the data are represented not only by labeled points but al...
A supervised learning paradigm is investigated, in which the data are represented by labeled regions...
A supervised learning paradigm is investigated, in which the data are represented by labeled regions...
Supervised learning is investigated, when the data are represented not only by labeled points but al...
Supervised learning from data is investigated from an optimization viewpoint. Ill-posedness issues o...
Various regularization techniques are investigated in supervised learning from data. Theoretical fea...
We propose a method for the approximation of high- or even infinite-dimensional feature vectors, whi...
We propose a family of learning algorithms based on a new form of regularization that allows us to ...
Abstract. We propose a framework for semi-supervised learning in reproducing kernel Hilbert spaces u...
Local learning methods approximate a target function (a posteriori probability) by partitioning the ...
The past few decades have brought substantial progress in the mathematical analysis of supervised le...
We show that the relevant information of a supervised learning problem is contained up to negligible...
We propose a novel method of dimensionality reduction for supervised learning. Given a regression or...
Abstract Supervised learning accounts for a lot of research activity in machine learning and many su...
We consider the general problem of learning from labeled and unlabeled data, which is often called s...
Supervised learning is investigated, when the data are represented not only by labeled points but al...
A supervised learning paradigm is investigated, in which the data are represented by labeled regions...
A supervised learning paradigm is investigated, in which the data are represented by labeled regions...
Supervised learning is investigated, when the data are represented not only by labeled points but al...
Supervised learning from data is investigated from an optimization viewpoint. Ill-posedness issues o...
Various regularization techniques are investigated in supervised learning from data. Theoretical fea...
We propose a method for the approximation of high- or even infinite-dimensional feature vectors, whi...
We propose a family of learning algorithms based on a new form of regularization that allows us to ...
Abstract. We propose a framework for semi-supervised learning in reproducing kernel Hilbert spaces u...
Local learning methods approximate a target function (a posteriori probability) by partitioning the ...
The past few decades have brought substantial progress in the mathematical analysis of supervised le...
We show that the relevant information of a supervised learning problem is contained up to negligible...
We propose a novel method of dimensionality reduction for supervised learning. Given a regression or...
Abstract Supervised learning accounts for a lot of research activity in machine learning and many su...
We consider the general problem of learning from labeled and unlabeled data, which is often called s...