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Group Equivariant Convolutional Networks

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arxiv 1602.07576 v3 pith:MNZ336O3 submitted 2016-02-24 cs.LG stat.ML

Group Equivariant Convolutional Networks

classification cs.LG stat.ML
keywords convolutionalg-cnnsgroupnetworksconvolutionequivariantg-convolutionslayers
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We introduce Group equivariant Convolutional Neural Networks (G-CNNs), a natural generalization of convolutional neural networks that reduces sample complexity by exploiting symmetries. G-CNNs use G-convolutions, a new type of layer that enjoys a substantially higher degree of weight sharing than regular convolution layers. G-convolutions increase the expressive capacity of the network without increasing the number of parameters. Group convolution layers are easy to use and can be implemented with negligible computational overhead for discrete groups generated by translations, reflections and rotations. G-CNNs achieve state of the art results on CIFAR10 and rotated MNIST.

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