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All or nearly all of the papers using dropout are using it for supervised learning. It seems that it could just as easily be used to regularize deep autoencoders, RBMs and DBNs. So why isn't dropout used in unsupervised learning?

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Look at denoising autoencoder, adding random noise is similar to dropout. –  Min Lin Oct 30 '13 at 2:17
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Yep, that's exactly the same idea. They randomly select inputs and set them to 0. See: deeplearning.net/tutorial/dA.html –  alfa Oct 30 '13 at 8:50

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