Created
October 10, 2016 16:50
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| import numpy as np | |
| def nonlin(x,deriv=False): | |
| if(deriv==True): | |
| return x*(1-x) | |
| return 1/(1+np.exp(-x)) | |
| X = np.array([[0,0,1], | |
| [0,1,1], | |
| [1,0,1], | |
| [1,1,1]]) | |
| y = np.array([[0], | |
| [1], | |
| [1], | |
| [0]]) | |
| 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 xrange(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) |
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