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A Computationally Efficient Neural Network Invariant to the Action of Symmetry Subgroups

18 February 2020
Piotr Kicki
Mete Ozay
Piotr Skrzypczyñski
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Abstract

We introduce a method to design a computationally efficient GGG-invariant neural network that approximates functions invariant to the action of a given permutation subgroup G≤SnG \leq S_nG≤Sn​ of the symmetric group on input data. The key element of the proposed network architecture is a new GGG-invariant transformation module, which produces a GGG-invariant latent representation of the input data. This latent representation is then processed with a multi-layer perceptron in the network. We prove the universality of the proposed architecture, discuss its properties and highlight its computational and memory efficiency. Theoretical considerations are supported by numerical experiments involving different network configurations, which demonstrate the effectiveness and strong generalization properties of the proposed method in comparison to other GGG-invariant neural networks.

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