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A Geometric Framework for Convolutional Neural Networks (1608.04374v2)

Published 15 Aug 2016 in stat.ML, cs.AI, and cs.NE

Abstract: In this paper, a geometric framework for neural networks is proposed. This framework uses the inner product space structure underlying the parameter set to perform gradient descent not in a component-based form, but in a coordinate-free manner. Convolutional neural networks are described in this framework in a compact form, with the gradients of standard --- and higher-order --- loss functions calculated for each layer of the network. This approach can be applied to other network structures and provides a basis on which to create new networks.

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