Many works related learning from examples to regularization techniques for inverse problems, emphasizing the strong algorithmic and conceptual analogy of certain learning algorithms with regularization algorithms. In particular it is well known that regularization schemes such as Tikhonov regularization can be effectively used in the context of learning and are closely related to algorithms such as support vector machines. Nevertheless the connection with inverse problem was considered only for the discrete (finite sample) problem and the probabilistic aspects of learning from examples were not taken into account. In this paper we provide a natural extension of such analysis to the continuous (population) case and study the interplay betwee...
The regularization of ill-posed systems of equations is carried out by corrections of the data or th...
International audienceWe study a non-linear statistical inverse problem, where we observe the noisy ...
Published in at http://dx.doi.org/10.1214/07-EJS115 the Electronic Journal of Statistics (http://www...
Many works related learning from examples to regularization techniques for inverse problems, emphasi...
Many works related learning from examples to regularization techniques for inverse prob- lems, empha...
Many works have shown that strong connections relate learning from examples to regularization techni...
Many works have shown that strong connections relate learning from examples to regularization techni...
In this paper we discuss a relation between Learning Theory and Regularization of linear ill-posed i...
AbstractIn this paper we discuss a relation between Learning Theory and Regularization of linear ill...
Many works have shown that strong connections relate learning from ex- amples to regularization tech...
In this paper we consider discrete inverse problems for which noise becomes negligible compared to d...
AbstractMany works have shown strong connections between learning and regularization techniques for ...
Supervised learning from data is investigated from an optimization viewpoint. Ill-posedness issues o...
Abstract: We study linear inverse problems under the premise that the forward operator is not at han...
Thismonograph is a valuable contribution to thehighly topical and extremly productive field ofregula...
The regularization of ill-posed systems of equations is carried out by corrections of the data or th...
International audienceWe study a non-linear statistical inverse problem, where we observe the noisy ...
Published in at http://dx.doi.org/10.1214/07-EJS115 the Electronic Journal of Statistics (http://www...
Many works related learning from examples to regularization techniques for inverse problems, emphasi...
Many works related learning from examples to regularization techniques for inverse prob- lems, empha...
Many works have shown that strong connections relate learning from examples to regularization techni...
Many works have shown that strong connections relate learning from examples to regularization techni...
In this paper we discuss a relation between Learning Theory and Regularization of linear ill-posed i...
AbstractIn this paper we discuss a relation between Learning Theory and Regularization of linear ill...
Many works have shown that strong connections relate learning from ex- amples to regularization tech...
In this paper we consider discrete inverse problems for which noise becomes negligible compared to d...
AbstractMany works have shown strong connections between learning and regularization techniques for ...
Supervised learning from data is investigated from an optimization viewpoint. Ill-posedness issues o...
Abstract: We study linear inverse problems under the premise that the forward operator is not at han...
Thismonograph is a valuable contribution to thehighly topical and extremly productive field ofregula...
The regularization of ill-posed systems of equations is carried out by corrections of the data or th...
International audienceWe study a non-linear statistical inverse problem, where we observe the noisy ...
Published in at http://dx.doi.org/10.1214/07-EJS115 the Electronic Journal of Statistics (http://www...