Provable approximation properties for deep neural networks

Abstract
We discuss approximation of functions using deep neural nets. Given a function on a -dimensional manifold , we construct a sparsely-connected depth-4 neural network and bound its error in approximating . The size of the network depends on dimension and curvature of the manifold , the complexity of , in terms of its wavelet description, and only weakly on the ambient dimension . Essentially, our network computes wavelet functions, which are computed from Rectified Linear Units (ReLU)
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