Скопировал с сайта: https://machinelearningmastery.ru/implement-backpropagation-algorithm-scratch-python/ код и поменял значения датасета ну и соответственно количество входных данных. Ошибка возникает только при тренировке нейронной сети!
from math import exp
from random import seed
from random import random
def initialize_network(n_inputs, n_hidden, n_outputs):
network = list()
hidden_layer = [{'weights':[random() for i in range(n_inputs + 1)]} for i in range(n_hidden)]
network.append(hidden_layer)
output_layer = [{'weights':[random() for i in range(n_hidden + 1)]} for i in range(n_outputs)]
network.append(output_layer)
return network
def activate(weights, inputs):
activation = weights[-1]
for i in range(len(weights)-1):
activation += weights[i] * inputs[i]
return activation
def transfer(activation):
return 1.0 / (1.0 + exp(-activation))
def forward_propagate(network, row):
inputs = row
for layer in network:
new_inputs = []
for neuron in layer:
activation = activate(neuron['weights'], inputs)
neuron['output'] = transfer(activation)
new_inputs.append(neuron['output'])
inputs = new_inputs
return inputs
def transfer_derivative(output):
return output * (1.0 - output)
def backward_propagate_error(network, expected):
for i in reversed(range(len(network))):
layer = network[i]
errors = list()
if i != len(network)-1:
for j in range(len(layer)):
error = 0.0
for neuron in network[i + 1]:
error += (neuron['weights'][j] * neuron['delta'])
errors.append(error)
else:
for j in range(len(layer)):
neuron = layer[j]
errors.append(expected[j] - neuron['output'])
for j in range(len(layer)):
neuron = layer[j]
neuron['delta'] = errors[j] * transfer_derivative(neuron['output'])
def update_weights(network, row, l_rate):
for i in range(len(network)):
inputs = row[:-1]
if i != 0:
inputs = [neuron['output'] for neuron in network[i - 1]]
for neuron in network[i]:
for j in range(len(inputs)):
neuron['weights'][j] += l_rate * neuron['delta'] * inputs[j]
neuron['weights'][-1] += l_rate * neuron['delta']
def train_network(network, train, l_rate, n_epoch, n_outputs):
for epoch in range(n_epoch):
sum_error = 0
for row in train:
outputs = forward_propagate(network, row)
expected = [0 for i in range(n_outputs)]
expected[row[-1]] = 1
sum_error += sum([(expected[i]-outputs[i])**2 for i in range(len(expected))])
backward_propagate_error(network, expected)
update_weights(network, row, l_rate)
print('>epoch=%d, lrate=%.1f, error=%.10f' % (epoch, l_rate, sum_error), end='\r')
def predict(network, row):
outputs = forward_propagate(network, row)
return outputs.index(max(outputs))
def add_layer(network, n_hidden):
hidden_layer = [{'weights':[random() for i in range(len(network))]} for i in range(n_hidden)]
network.insert(0, hidden_layer)
dataset = [[1, 0, 0, 1],
[1, 1, 0, 1],
[1, 0, 0, 1],
[0, 1, 0, 0],
[0, 0, 0, 0],
[0, 0, 1, 0],
[0, 1, 1, 0]]
network = initialize_network(3, 2, 2)
#add_layer(network, 2)
train_network(network, dataset, 0.5, 20000, 3)
print(predict(network, [0, 1, 0]))
Когда я запускаю этот код возникает ошибка:
File "/home/michazaxm1205/Python/neyro/neyro.py", line 96, in <module>
train_network(network, dataset, 0.5, 20000, 3)
File "/home/michazaxm1205/Python/neyro/neyro.py", line 71, in train_network
sum_error += sum([(expected[i]-outputs[i])**2 for i in range(len(expected))])
File "/home/michazaxm1205/Python/neyro/neyro.py", line 71, in <listcomp>
sum_error += sum([(expected[i]-outputs[i])**2 for i in range(len(expected))])
IndexError: list index out of range