微信公众号搜"智元新知"关注
微信扫一扫可直接关注哦!

python实现简单神经网络算法

python实现简单神经网络算法,供大家参考,具体内容如下

python实现二层神经网络

包括输入层和输出

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([[0,1],[0,1,[1,1]]) 
 
#output dataset 
y = np.array([[0,1]]).T 
 
np.random.seed(1) 
 
#init weight value 
syn0 = 2*np.random.random((3,1))-1 
 
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 
import numpy as np 
 
#sigmoid function 
def nonlin(x,l1_delta) 
print "outout after Training:" 
print l1 

这里,
l0:输入层

l1:输出

syn0:初始权值

l1_error:误差

l1_delta:误差校正系数

func nonlin:sigmoid函数

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

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]]).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 
 
for j in range(60000): 
  l0 = X            #the first layer,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 
import numpy as np 
 
def nonlin(x,deriv = True) 
 
  syn1 += l1.T.dot(l2_delta) 
  syn0 += l0.T.dot(l1_delta) 
print "outout after Training:" 
print l2 

以上就是本文的全部内容,希望对大家的学习有所帮助,也希望大家多多支持编程小技巧。

版权声明:本文内容由互联网用户自发贡献,该文观点与技术仅代表作者本人。本站仅提供信息存储空间服务,不拥有所有权,不承担相关法律责任。如发现本站有涉嫌侵权/违法违规的内容, 请发送邮件至 dio@foxmail.com 举报,一经查实,本站将立刻删除。

相关推荐