A central question of machine learning is how deep nets manage to learn tasks in high dimensions. An appealing hypothesis is that they achieve this feat by building a representation of the data where information irrelevant to the task is lost. For image datasets, this view is supported by the observation that after (and not before) training, the neural representation becomes less and less sensitive to diffeomorphisms acting on images as the signal propagates through the net. This loss of sensitivity correlates with performance, and surprisingly correlates with a gain of sensitivity to white noise acquired during training. These facts are unexplained, and as we demonstrate still hold when white noise is added to the images of the training se...
Convolutional neural networks (CNNs) are one of the most successful computer vision systems to solve...
Representations learned by pre-training a neural network on a large dataset are increasingly used su...
Deep neural networks (DNNs) defy the classical bias-variance trade-off: adding parameters to a DNN t...
Understanding why deep nets can classify data in large dimensions remains a challenge. It has been p...
Deep learning algorithms are responsible for a technological revolution in a variety oftasks includi...
In the past few years, Deep Learning has become the method of choice for producing state-of-the-ar...
Recent work suggests that changing Convolutional Neural Network (CNN) architecture by introducing a ...
In the last decade or so, deep learning has revolutionized entire domains of machine learning. Neura...
While Deep Neural Networks (DNNs) have recently achieved impressive results on many classification t...
Deep neural networks are highly expressive models that have recently achieved state of the art perfo...
The ontogenetic development of human vision and the real-time neural processing of visual input exhi...
NeurIPS 2019International audienceDespite the phenomenal success of deep neural networks in a broad ...
AbstractRecent advances in the area of deep neural networks brought a lot of attention to some of th...
It is widely believed that the success of deep networks lies in their ability to learn a meaningful ...
This research project investigates the role of key factors that led to the resurgence of deep CNNs ...
Convolutional neural networks (CNNs) are one of the most successful computer vision systems to solve...
Representations learned by pre-training a neural network on a large dataset are increasingly used su...
Deep neural networks (DNNs) defy the classical bias-variance trade-off: adding parameters to a DNN t...
Understanding why deep nets can classify data in large dimensions remains a challenge. It has been p...
Deep learning algorithms are responsible for a technological revolution in a variety oftasks includi...
In the past few years, Deep Learning has become the method of choice for producing state-of-the-ar...
Recent work suggests that changing Convolutional Neural Network (CNN) architecture by introducing a ...
In the last decade or so, deep learning has revolutionized entire domains of machine learning. Neura...
While Deep Neural Networks (DNNs) have recently achieved impressive results on many classification t...
Deep neural networks are highly expressive models that have recently achieved state of the art perfo...
The ontogenetic development of human vision and the real-time neural processing of visual input exhi...
NeurIPS 2019International audienceDespite the phenomenal success of deep neural networks in a broad ...
AbstractRecent advances in the area of deep neural networks brought a lot of attention to some of th...
It is widely believed that the success of deep networks lies in their ability to learn a meaningful ...
This research project investigates the role of key factors that led to the resurgence of deep CNNs ...
Convolutional neural networks (CNNs) are one of the most successful computer vision systems to solve...
Representations learned by pre-training a neural network on a large dataset are increasingly used su...
Deep neural networks (DNNs) defy the classical bias-variance trade-off: adding parameters to a DNN t...