The classical framework of learning from examples is enhanced by the introduction of hard point-wise constraints, i.e., constraints, on a finite set of examples, that cannot be violated. They arise, e.g., when imposing coherent decisions of classifiers acting on different views of the same pattern. Constrained variational calculus is exploited to derive a representer theorem that provides a description of the functional structure of the solution. The general theory is applied to learning from hard linear point-wise constraints combined with classical supervised pairs and loss functions
The significant evolution of kernel machines in the last few years has opened the doors to a truly n...
In this paper, we focus on multitask learning and discuss the notion of learning from constraints, i...
We refer to the framework of learning with mixed hard/soft pointwise constraints considered in Gnecc...
The classical framework of learning from examples is enhanced by the introduction of hard point-wise...
A learning paradigm is proposed and investigated, in which the classical framework of learning from ...
A learning paradigm is proposed and investigated, in which the classical framework of learning from ...
The classical framework of learning from examples is enhanced by the introduction of hard pointwise ...
A learning paradigm is proposed, in which one has both classical supervised examples and constraints...
A learning paradigm is presented, which extends the classical framework of learning from examples b...
A learning paradigm is presented, which extends the classical framework of learning from examples b...
A theory of learning is proposed, which extends naturally the classic regularization framework of ke...
t A theory of learning is proposed, which extends naturally the classic regularization framework of ...
The mathematical foundations of a new theory for the design of intelligent agents are presented. The...
The significant evolution of kernel machines in the last few years has opened the doors to a truly n...
In this paper, we focus on multitask learning and discuss the notion of learning from constraints, i...
We refer to the framework of learning with mixed hard/soft pointwise constraints considered in Gnecc...
The classical framework of learning from examples is enhanced by the introduction of hard point-wise...
A learning paradigm is proposed and investigated, in which the classical framework of learning from ...
A learning paradigm is proposed and investigated, in which the classical framework of learning from ...
The classical framework of learning from examples is enhanced by the introduction of hard pointwise ...
A learning paradigm is proposed, in which one has both classical supervised examples and constraints...
A learning paradigm is presented, which extends the classical framework of learning from examples b...
A learning paradigm is presented, which extends the classical framework of learning from examples b...
A theory of learning is proposed, which extends naturally the classic regularization framework of ke...
t A theory of learning is proposed, which extends naturally the classic regularization framework of ...
The mathematical foundations of a new theory for the design of intelligent agents are presented. The...
The significant evolution of kernel machines in the last few years has opened the doors to a truly n...
In this paper, we focus on multitask learning and discuss the notion of learning from constraints, i...
We refer to the framework of learning with mixed hard/soft pointwise constraints considered in Gnecc...