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Python编程实现的简单神经网络算法示例

更新时间:2020-05-20 06:54:01 作者:startmvc
本文实例讲述了Python编程实现的简单神经网络算法。分享给大家供大家参考,具体如下:pyt

本文实例讲述了Python编程实现的简单神经网络算法。分享给大家供大家参考,具体如下:

python实现二层神经网络

包括输入层和输出层


# -*- coding:utf-8 -*-
#! python2
import numpy as np
#sigmoid function
def nonlin(x, deriv = False):
 if(deriv == True):
 return x*(1-x)
 return 1/(1+np.exp(-x))
#input dataset
x = np.array([[0,0,1],
 [0,1,1],
 [1,0,1],
 [1,1,1]])
#output dataset
y = np.array([[0,0,1,1]]).T
np.random.seed(1)
#init weight value
syn0 = 2*np.random.random((3,1))-1
print "脚本之家测试结果:"
for iter in xrange(100000):
 l0 = x #the first layer,and the input layer
 l1 = nonlin(np.dot(l0,syn0)) #the second layer,and the output layer
 l1_error = y-l1
 l1_delta = l1_error*nonlin(l1,True)
 syn0 += np.dot(l0.T, l1_delta)
print "outout after Training:"
print l1

这里,

l0:输入层 l1:输出层 syn0:初始权值 l1_error:误差 l1_delta:误差校正系数 func nonlin:sigmoid函数

这里迭代次数为100时,预测结果为

迭代次数为1000时,预测结果为:

迭代次数为10000,预测结果为:

迭代次数为100000,预测结果为:

可见迭代次数越多,预测结果越接近理想值,当时耗时也越长。

python实现三层神经网络

包括输入层、隐含层和输出层


# -*- coding:utf-8 -*-
#! python2
import numpy as np
def nonlin(x, deriv = False):
 if(deriv == True):
 return x*(1-x)
 else:
 return 1/(1+np.exp(-x))
#input dataset
X = np.array([[0,0,1],
 [0,1,1],
 [1,0,1],
 [1,1,1]])
#output dataset
y = np.array([[0,1,1,0]]).T
syn0 = 2*np.random.random((3,4)) - 1 #the first-hidden layer weight value
syn1 = 2*np.random.random((4,1)) - 1 #the hidden-output layer weight value
print "脚本之家测试结果:"
for j in range(60000):
 l0 = X #the first layer,and the input layer
 l1 = nonlin(np.dot(l0,syn0)) #the second layer,and the hidden layer
 l2 = nonlin(np.dot(l1,syn1)) #the third layer,and the output layer
 l2_error = y-l2 #the hidden-output layer error
 if(j%10000) == 0:
 print "Error:"+str(np.mean(l2_error))
 l2_delta = l2_error*nonlin(l2,deriv = True)
 l1_error = l2_delta.dot(syn1.T) #the first-hidden layer error
 l1_delta = l1_error*nonlin(l1,deriv = True)
 syn1 += l1.T.dot(l2_delta)
 syn0 += l0.T.dot(l1_delta)
print "outout after Training:"
print l2

运行结果:

Python 神经网络 算法