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Explicit Regularisation in Gaussian Noise Injections
Conference proceeding   Open access

Explicit Regularisation in Gaussian Noise Injections

Matthew Willetts, Stephen Roberts, Chris Holmes, Alexander Camuto and Umut Şimşekli
Advances in Neural Information Processing Systems 33
NeurIPS
2020

Abstract

Modelling (Statistical methods & theory) Supervised learning Machine Learning
We study the regularisation induced in neural networks by Gaussian noise injections (GNIs). Though such injections have been extensively studied when applied to data, there have been few studies on understanding the regularising effect they induce when applied to network activations. Here we derive the explicit regulariser of GNIs, obtained by marginalising out the injected noise, and show that it penalises functions with high-frequency components in the Fourier domain; particularly in layers closer to a neural network’s output. We show analytically and empirically that such regularisation produces calibrated classifiers with large classification margins
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