A Novel Convolutional Neural Network Architecture with a Continuous Symmetry
Abstract
A new ConvNet architecture inspired by quasi-linear hyperbolic PDEs allows for weight modifications via continuous symmetry, enhancing flexibility and introducing a novel property in neural networks.
This paper introduces a new Convolutional Neural Network (ConvNet) architecture inspired by a class of partial differential equations (PDEs) called quasi-linear hyperbolic systems. With comparable performance on the image classification task, it allows for the modification of the weights via a continuous group of symmetry. This is a significant shift from traditional models where the architecture and weights are essentially fixed. We wish to promote the (internal) symmetry as a new desirable property for a neural network, and to draw attention to the PDE perspective in analyzing and interpreting ConvNets in the broader Deep Learning community.
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