神经网络学习之----进军多层-BP神经网络-数字识别(代码实现)

思路:

  使用sklearn中的数字数据集,主要有0,1,2,3,4,5,6,7,8,9。我们需要编写一个BP网络模型对数字进行识别。

sklearn数据集:

from sklearn import datasets
from matplotlib import pyplot as plt

#获取数据集
digits = datasets.load_digits()

#可视化
for i in range(1, 11):
        plt.subplot(2, 5, i)  #划分成2行5列
        plt.imshow(digits.data[i - 1].reshape([8, 8]), cmap=plt.cm.gray_r)
        plt.text(3, 10, str(digits.target[i - 1])) #在图片的任意位置添加文本
        plt.xticks([]) #认为设置坐标轴显示的刻度值
        plt.yticks([])
plt.show()

BP网络-数字识别代码实现

import numpy as np
from sklearn.datasets import load_digits
from sklearn.preprocessing import LabelBinarizer
from sklearn.cross_validation import train_test_split

def sigmoid(x):
    return 1/(1+np.exp(-x))

def dsigmoid(x):
    return x*(1-x)

class NeuralNetwork:
    def __init__(self,layers):#(64,100,10)
        #权值的初始化,范围-1到1
        self.V = np.random.random((layers[0]+1,layers[1]+1))*2-1
        self.W = np.random.random((layers[1]+1,layers[2]))*2-1
        
    def train(self,X,y,lr=0.11,epochs=10000):
        #添加偏置
        temp = np.ones([X.shape[0],X.shape[1]+1])
        temp[:,0:-1] = X
        X = temp
        
        for n in range(epochs+1):
            i = np.random.randint(X.shape[0]) #随机选取一个数据
            x = [X[i]]
            x = np.atleast_2d(x)#转为2维数据
            
            L1 = sigmoid(np.dot(x,self.V))#隐层输出
            L2 = sigmoid(np.dot(L1,self.W))#输出层输出
            
            L2_delta = (y[i]-L2)*dsigmoid(L2)
            L1_delta= L2_delta.dot(self.W.T)*dsigmoid(L1)
            
            self.W += lr*L1.T.dot(L2_delta)
            self.V += lr*x.T.dot(L1_delta)
            
            #每训练1000次预测一次准确率
            if n%1000==0:
                predictions = []
                for j in range(X_test.shape[0]):
                    o = self.predict(X_test[j])
                    predictions.append(np.argmax(o))#获取预测结果
                accuracy = np.mean(np.equal(predictions,y_test))
                print('epoch:',n,'accuracy:',accuracy)
        
    def predict(self,x):
        #添加偏置
        temp = np.ones(x.shape[0]+1)
        temp[0:-1] = x
        x = temp
        x = np.atleast_2d(x)#转为2维数据

        L1 = sigmoid(np.dot(x,self.V))#隐层输出
        L2 = sigmoid(np.dot(L1,self.W))#输出层输出
        return L2

digits = load_digits()#载入数据
X = digits.data#数据
y = digits.target#标签
#输入数据归一化
X -= X.min()
X /= X.max()

nm = NeuralNetwork([64,100,10])#创建网络

X_train,X_test,y_train,y_test = train_test_split(X,y) #分割数据1/4为测试数据,3/4为训练数据

labels_train = LabelBinarizer().fit_transform(y_train)#标签二值化     0,8,6   0->1000000000  3->0001000000
labels_test = LabelBinarizer().fit_transform(y_test)#标签二值化

print('start')

nm.train(X_train,labels_train,epochs=20000)

print('end')


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原文地址:https://www.cnblogs.com/mengqimoli/p/11103088.html