Deep Belief networks
Deep Belief networks (DBNs) were one of the most popular, non-convolutional models that could be successfully deployed as deep neural networks in the year 2006-07 [124] [125]. The renaissance of deep learning probably started from the invention of DBNs back in 2006. Before the introduction of DBNs, it was very difficult to optimize the deep models. By outperforming the Support Vector machines (SVMs), DBNs had shown that deep models can be really successful; although, compared to the other generative or unsupervised learning algorithms, the popularity of DBNs has fallen a bit, and is rarely used these days. However, they still play a very important role in the history of deep learning.
Note
A DBN with only one hidden layer is just an RBM.
DBNs are generative models composed of more than one layer of hidden variables. The hidden variables are generally binary in nature; however the visible units might consist of binary or real values. In DBNs, every unit of each layer is...