Unsupervised learning — autoencoders
Autoencoders are a class of neural network that attempt to recreate the input as its target using back-propagation. An autoencoder consists of two parts, an encoder and a decoder. The encoder will read the input and compress it to a compact representation, and the decoder will read the compact representation and recreate the input from it. In other words, the autoencoder tries to learn the identity function by minimizing the reconstruction error.
Even though the identity function does not seem like a very interesting function to learn, the way in which this is done makes it interesting. The number of hidden units in the autoencoder is typically less than the number of input (and output) units. This forces the encoder to learn a compressed representation of the input which the decoder reconstructs. If there is structure in the input data in the form of correlations between input features, then the autoencoder will discover some of these correlations, and...