A simple example of using the Accord .NET C# library to implement a deep-learning neural network (ie., Deep Belief Network) with machine learning.
Checkout branch "XOR" for a simple example of deep-learning with Accord .NET. This branch contains training using one of the most basic neural network cases - the XOR function.
Checkout the master branch for a slightly less-basic example of training on an ASCII digit dataset. This example uses multiple layers in the neural network and has the potential to "dream" representations of data within its layers.
- Start with a neural network with multiple RestrictedBoltzman machine layers.
- Use unsupervised training on each layer in the network, one at a time, except for the output layer. This allows each layer to learn specific features about the input data.
- If you ran unsupervised training on the whole network, including the output layer, add an additional (untrained) layer to the network to serve as the output layer. Otherwise, skip this step.
- Run back-propagation on the entire network to fine-tune for classification.