We study the expressivity of deep neural networks. Measuring a network's complexity by its number of connections or by its number of neurons, we consider the class of functions for which the error of best approximation with networks of a given complexity decays at a certain rate when increasing the complexity budget. Using results from classical approximation theory, we show that this class can be endowed with a (quasi)-norm that makes it a linear function space, called approximation space. We establish that allowing the networks to have certain types of "skip connections" does not change the resulting approximation spaces. We also discuss the role of the network's nonlinearity (also known as activation function) on the resulting spaces, as...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
National audienceWe study the expressivity of sparsely connected deep networks. Measuring a network'...
We study the expressivity of deep neural networks. Measuring a network's complexity by its number of...
We study the expressivity of deep neural networks. Measuring a network's complexity by its number of...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
National audienceWe study the expressivity of sparsely connected deep networks. Measuring a network'...
We study the expressivity of deep neural networks. Measuring a network's complexity by its number of...
We study the expressivity of deep neural networks. Measuring a network's complexity by its number of...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
International audienceWe study the expressivity of deep neural networks. Measuring a network's compl...
National audienceWe study the expressivity of sparsely connected deep networks. Measuring a network'...