I have two (related to each other) questions about feedback networks in Encog Framework for C#.
Is it possible to specify more details when I create ElmanPattern (e.g. bias, output layer's activation function, additional hidden layers)?
Is it possible to provide feedback for input layer?
Let me explain it with more details:
Ad 1. When I create ordinary network, which is not Elman network, I can use BasicLayer's constructor to provide it with activation function, bool hasBias and int neuronCount. However, official example (ConsoleExamples/Examples/ElmanNetwork/ElmanExample.cs) shows that I can only choose one activationFunction for the whole ElmanPatter.
I have examined ElmanPattern's properties and it looks like I can only set some basic properties (I can use AddHiddenLayer but without specifying its activation function, I don't see any way to choose bias and I couldn't find in the documentation if Elman's context neurons are supplied to additional hidden layers too).
Ad 2. Jordan network adds context neurons to output layer. Elman network adds context neurons to hidden layer. So somehow natural extension of this idea would be possiblity to add context neurons to input layer. Why isn't it present? Is it because it would not make sense to make it possible?
In Elman network current hidden neuron is calculated based on current values from input neurons and previous value of that hidden neuron. And for that new kind of network there would be hidden neuron calculated based on current inputs and previous inputs. For me it looks like different idea.
I know I can manually do it, by creating twice higher number of input neurons and ensuring that first half of input data receives current input data and the other half of input data has previous input data. However, that would be much easier to do it if it was feature of Encog framework.