I'm training my neural network to classify some things in an image. I crop 40x40 pixels images and classify it that it as some object or not. So it has 1600 input neurons, 3 hidden layers (500, 200, 30) and 1 output neuron that must say 1 or 0. I use the Flood library.
I cannot train it with
QuasiNewtonMethod, because it uses a big matrix in the algorithm and it do not fit in my memory. So I use
GradientDescent and the
The problem is that by training it overflows the weights and the output of the neural network is
NaN for every input.
Also my dataset is too big (about 800mb when it is in CSV) and I can't load it fully. So I made many
InputTargetDataSets with 1000 instances and saved it as XML (the default format for Flood) and training it for one epoch on each dataset randomly shuffled. But also when I train it just on one big dataset (10000 instances) it overflows.
Why is this happening and how can I prevent that?