I've always been interested in new things happening with Neural Networking and recently IBM showed their new SyNAPSE computing system: http://www-03.ibm.com/press/us/en/pressrelease/41710.wss
In this press release is a link to a paper (http://www.research.ibm.com/software/IBMResearch/multimedia/IJCNN2013.neuron-model.pdf) which describes how their neuron works. I implemented the neuron model in Python just for fun, but I was wondering how one trains a system of these neurons.
From classical feed-forward networks I know that backpropagation is the 'classic' way. For recurrent networks there are variations on backpropagation and for other complex topologies genetic programming is also used.
I am unable to find any reference to how these models are trained in the papers or regarding full neuron models in general. What is a common way of training these models?