I am trying to design neural network in Matlab,
I see in many source that the data that used with training neural network
better to be normalize, use
[pn,ps] = mapstd(Input) to normalize the input and target,
then I train the network, last thing i test the network by
my problem is:
how to convert the result to normal result?
last thing, is there any way to train the network with new data to increase the performance?
i mean train with more data where the weighing change slightly to increase the old performance
it is clear that normalize is mean by this function
[pn,ps] = mapstd(Input)
all value will be in range of -1 to 1 as i think, the sim of neural network will be normalize result while i have to convert it again to the original range how?