assume there are many training samples of 20x20 pixel'd handwritten digits. I trained them with multi-layered Restriected Boltzmann Machine neural network. The top layer consists of 10-neuron that each means number 0~9.
The problem is, RBM's not classifying those 0~9. It actually classfies digits into 10-kinds, but that 10 kinds does not match digits 0~9:
0th neuron matches '4' 1st neuron matches differently shaped '4' 2nd neuron matches '3'....
It seems the top layer needs supervised learning but I have only Contrastive-Divergence learning which is the most common training method of RBMs. Any tips?