For part I see arXiv:2007.00118We study the approximation by tensor networks (TNs) of functions from classical smoothness classes. The considered approximation tool combines a tensorization of functions in $L^p([0,1))$, which allows to identify a univariate function with a multivariate function (or tensor), and the use of tree tensor networks (the tensor train format) for exploiting low-rank structures of multivariate functions. The resulting tool can be interpreted as a feed-forward neural network, with first layers implementing the tensorization, interpreted as a particular featuring step, followed by a sum-product network with sparse architecture. In part I of this work, we presented several approximation classes associated with differen...
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...
For part II see arXiv:2007.00128We study the approximation of functions by tensor networks (TNs). We...
We consider neural network approximation spaces that classify functions according to the rate at whi...
National audienceWe study the expressivity of sparsely connected deep networks. Measuring a network'...
National audienceWe study the expressivity of sparsely connected deep networks. Measuring a network'...
National audienceWe study the expressivity of sparsely connected deep networks. Measuring a network'...
We consider neural network approximation spaces that classify functions according to the rate at whi...
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...
For part II see arXiv:2007.00128We study the approximation of functions by tensor networks (TNs). We...
We consider neural network approximation spaces that classify functions according to the rate at whi...
National audienceWe study the expressivity of sparsely connected deep networks. Measuring a network'...
National audienceWe study the expressivity of sparsely connected deep networks. Measuring a network'...
National audienceWe study the expressivity of sparsely connected deep networks. Measuring a network'...
We consider neural network approximation spaces that classify functions according to the rate at whi...
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...