Group Invariant Convolutional Boltzmann Machines
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2020-12-04
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Abstract
We investigate group invariance in unsupervised learning in the context of certain generative networks based on Boltzmann machines. Specifically, we introduce a generalization of restricted Boltzmann machines which is adapted to input data that is acted upon by any compact group G.
This is done by using certain G-equivariant convolutions between layers. We prove that the deep belief networks constructed from such Boltzmann machines define probability distributions that are invariant with respect to the action of G.
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Convolutional Boltzmann Machines, Convolutional neural networks, artificial neural networks, machine learning, group invariance, group equivariance