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Analyzing noise in autoencoders and deep networks

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arxiv 1406.1831 v1 pith:4UKBWIV6 submitted 2014-06-06 cs.NE cs.LG

Analyzing noise in autoencoders and deep networks

classification cs.NE cs.LG
keywords autoencodersnoisedenoisingframeworkrepresentationsdeepdropoutinternal
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Autoencoders have emerged as a useful framework for unsupervised learning of internal representations, and a wide variety of apparently conceptually disparate regularization techniques have been proposed to generate useful features. Here we extend existing denoising autoencoders to additionally inject noise before the nonlinearity, and at the hidden unit activations. We show that a wide variety of previous methods, including denoising, contractive, and sparse autoencoders, as well as dropout can be interpreted using this framework. This noise injection framework reaps practical benefits by providing a unified strategy to develop new internal representations by designing the nature of the injected noise. We show that noisy autoencoders outperform denoising autoencoders at the very task of denoising, and are competitive with other single-layer techniques on MNIST, and CIFAR-10. We also show that types of noise other than dropout improve performance in a deep network through sparsifying, decorrelating, and spreading information across representations.

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