I would appreciate a some insights into the workings of the PyBrain's neural network. I have a dataset of different household features that correspond to a certain household income. The task is to create a regression based on neural networks to be able to predict the income for given features.
I've tried the simple constructor
pybrain.tools.shortcuts.buildNetwork(feature_count, 12, 1, recurrent=False)
and it kinda works. But if i change the hiddenlayer to use GaussianLayer or LinearLayer i am getting the NaNs as output during the training phase.
Is there maybe something else that needs to be taken care of when using these layers (I am guessing maybe feature selection, when they correlate)?