International audienceA grand challenge in representation learning is the development of computational algorithms that learn the different explanatory factors of variation behind high-dimensional data. Representation models (usually referred to as encoders) are often determined for optimizing performance on training data when the real objective is to generalize well to other (unseen) data. The first part of this chapter is devoted to provide an overview of and introduction to fundamental concepts in statistical learning theory and the Information Bottleneck principle. It serves as a mathematical basis for the technical results given in the second part, in which an upper bound to the generalization gap corresponding to the cross-entropy risk...
We define the relevant information in a signal x 2 X as being the information that this signal provi...
The Information Bottleneck (IB) method provides an insightful and principled approach for balancing ...
Abstract. A fundamental question in learning theory is the quantification of the basic tradeoff betw...
International audienceA grand challenge in representation learning is the development of computation...
International audienceA grand challenge in representation learning is the development of computation...
International audienceA grand challenge in representation learning is the development of computation...
A grand challenge in representation learning is the development of computational algorithms that lea...
International audienceA grand challenge in representation learning is the development of computation...
International audienceA grand challenge in representation learning is the development of computation...
International audienceA grand challenge in representation learning is the development of computation...
International audienceA grand challenge in representation learning is the development of computation...
International audienceA grand challenge in representation learning is the development of computation...
35 pages, 3 figures. Submitted for publicationA grand challenge in representation learning is to lea...
35 pages, 3 figures. Submitted for publicationA grand challenge in representation learning is to lea...
35 pages, 3 figures. Submitted for publicationA grand challenge in representation learning is to lea...
We define the relevant information in a signal x 2 X as being the information that this signal provi...
The Information Bottleneck (IB) method provides an insightful and principled approach for balancing ...
Abstract. A fundamental question in learning theory is the quantification of the basic tradeoff betw...
International audienceA grand challenge in representation learning is the development of computation...
International audienceA grand challenge in representation learning is the development of computation...
International audienceA grand challenge in representation learning is the development of computation...
A grand challenge in representation learning is the development of computational algorithms that lea...
International audienceA grand challenge in representation learning is the development of computation...
International audienceA grand challenge in representation learning is the development of computation...
International audienceA grand challenge in representation learning is the development of computation...
International audienceA grand challenge in representation learning is the development of computation...
International audienceA grand challenge in representation learning is the development of computation...
35 pages, 3 figures. Submitted for publicationA grand challenge in representation learning is to lea...
35 pages, 3 figures. Submitted for publicationA grand challenge in representation learning is to lea...
35 pages, 3 figures. Submitted for publicationA grand challenge in representation learning is to lea...
We define the relevant information in a signal x 2 X as being the information that this signal provi...
The Information Bottleneck (IB) method provides an insightful and principled approach for balancing ...
Abstract. A fundamental question in learning theory is the quantification of the basic tradeoff betw...