If I understood correctly how the RPROP works we need to consider only gradient value which is:

for output layer:

`self.gradient = self.activation_function_prim(self.weighted_sum) * ( correct_out - self.output)`

for hidden layer:

`wsum = 0 for i in range(len(self.output_neurons)): output_neuron = self.output_neurons[i] wsum += output_neuron.gradient * output_neuron.weights[output_neuron.input_neurons.index(self)] # calculate delta self.gradient = self.activation_function_prim(self.weighted_sum) * wsum`

Is it correct and now we need to check only its sign or I've missed something? Because it's no work for me. (previosly it was ok when standard backprop was used). Here is my code to update weights in hidden neuron:

```
def error_backpropagation(self):
""" Fix weights using backpropagation algorithm"""
# first we need to caclculate weighted sum of all changes in successor layer???
wsum = 0
for i in range(len(self.output_neurons)):
output_neuron = self.output_neurons[i]
wsum += output_neuron.gradient * output_neuron.weights[output_neuron.input_neurons.index(self)]
# calculate delta
self.gradient = self.activation_function_prim(self.weighted_sum) * wsum
# now we can fix weights a little bit
for i in range(len(self.weights)):
#calculate learning rate for weight (we should take into account only sign of gradient)
rate = self.weight_rates[i]
history_gradient = self.previous_gradient * self.gradient
if history_gradient > 0:
rate = rate * self.h_up
elif history_gradient < 0:
rate = rate * self.h_down
self.weight_rates[i] = rate
change = self.weight_rates[i]
#determine sign of change depending on current gradient
if self.gradient > 0:
change = change * -1
elif self.gradient == 0:
change = 0
self.weights[i] += change
self.previous_gradient = self.gradient #save gradient for next step
```