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. Encoder models are usually determined to optimize performance on training data when the real objective is to generalize well to other (unseen) data. Although numerical evidence suggests that noise injection at the level of representations might improve the generalization ability of the resulting encoders, an information-theoretic justification of this principle remains elusive. In this work, we derive an upper bound to the so-called generalization gap corresponding to the cross-entropy loss and show that when this bound times a suitable multi...
Deep learning has transformed computer vision, natural language processing, and speech recognition. ...
This paper was accepted for publication to Machine Learning (Springer). Overfitting data is a well-k...
This article considers the subject of information losses arising from the finite data sets used in t...
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...
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...
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...
Deep learning has transformed computer vision, natural language processing, and speech recognition. ...
This paper was accepted for publication to Machine Learning (Springer). Overfitting data is a well-k...
This article considers the subject of information losses arising from the finite data sets used in t...
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...
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...
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...
Deep learning has transformed computer vision, natural language processing, and speech recognition. ...
This paper was accepted for publication to Machine Learning (Springer). Overfitting data is a well-k...
This article considers the subject of information losses arising from the finite data sets used in t...