I'm using a neural network made of 4 input neurons, 1 hidden layer made of 20 neurons and a 7 neuron output layer.

I'm trying to train it for a bcd to 7 segment algorithm. My data is normalized 0 is -1 and 1 is 1.

When the output error evaluation happens, the neuron saturates wrong. If the desired output is `1`

and the real output is `-1`

, the error is `1-(-1)= 2`

.

When I multiply it by the derivative of the activation function `error*(1-output)*(1+output)`

, the error becomes almost `0`

Because of `2*(1-(-1)*(1-1)`

.

How can I avoid this saturation error?