Estou com um problema no seguinte código:
import numpy as np
def nonlin(x,deriv=False):
if(deriv==True):
return x*(1-x)
return 1/(1+np.exp(np.float32(-x)))
X = np.array([[488457.495,6673006.568,68.624],[488458.287,6673008.192,68.621],
[488459.073,6673009.798,68.618], [488456.712,6673004.978,66.558]],dtype=object)# Entrada_Estação_Total_Aba_8_Reg_01
y = np.array([[488457.500,6673006.571,68.624],[488458.281,6673008.199,68.617],
[488459.071,6673009.807,68.615],[488456.722,6673004.980,66.566]],dtype=object).T#Registro_C1_Nuvem_Aba_*_REG_1
np.random.seed(1)
# randomly initialize our weights with mean 0
syn0 = 2*np.random.random((3,4)) - 1
syn1 = 2*np.random.random((4,1)) - 1
for j in range(60000):
# Feed forward through layers 0, 1, and 2
l0 = X
l1 = nonlin(np.dot(l0,syn0))
l2 = nonlin(np.dot(l1,syn1))
# how much did we miss the target value?
l2_error = y - l2
if (j% 10000) == 0:
print ("Error:" + str(np.mean(np.abs(l2_error))))
# in what direction is the target value?
# were we really sure? if so, don't change too much.
l2_delta = l2_error*nonlin(l2,deriv=True)
# how much did each l1 value contribute to the l2 error (according to the weights)?
l1_error = l2_delta.dot(syn1.T)
# in what direction is the target l1?
# were we really sure? if so, don't change too much.
l1_delta = l1_error * nonlin(l1,deriv=True)
syn1 += l1.T.dot(l2_delta)
syn0 += l0.T.dot(l1_delta)
Quando eu executo o código aparece a seguinte mensagem de erro:
Warning (from warnings module):
File "F:\Perceptron_PE_TLS\Perceptron_TLS_2_Camadas.py", line 7
return 1/(1+np.exp(np.float32(-x)))
RuntimeWarning: overflow encountered in exp
Traceback (most recent call last):
File "F:\Perceptron_PE_TLS\Perceptron_TLS_2_Camadas.py", line 39, in <module>
l2_error = y - l2
ValueError: operands could not be broadcast together with shapes (3,4) (4,1)
Quando eu executo o código com valores inteiros esse problema não ocorre, no caso quando os valores de X e Y são esses abaixo o script roda normal.
X = np.array([[0,0,1],
[0,1,1],
[1,0,1],
[1,1,1]])
y = np.array([[0],
[1],
[1],
[0]])