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贵阳商城网站开发,网站建设工作室小俊哥,wordpress 4.9优化,网站预订功能怎么做文章目录 数据准备建立模型建立输入层 x建立隐藏层h1建立隐藏层h2建立输出层 定义训练方式建立训练数据label真实值 placeholder定义loss function选择optimizer 定义评估模型的准确率计算每一项数据是否正确预测将计算预测正确结果,加总平均 开始训练画出误差执行结…

文章目录

  • 数据准备
  • 建立模型
          • 建立输入层 x
          • 建立隐藏层h1
          • 建立隐藏层h2
          • 建立输出层
  • 定义训练方式
          • 建立训练数据label真实值 placeholder
          • 定义loss function
          • 选择optimizer
  • 定义评估模型的准确率
          • 计算每一项数据是否正确预测
          • 将计算预测正确结果,加总平均
  • 开始训练
          • 画出误差执行结果
          • 画出准确率执行结果
  • 评估模型的准确率
  • 进行预测
  • 找出预测错误

GITHUB地址https://github.com/fz861062923/TensorFlow
注意下载数据连接的是外网,有一股神秘力量让你403

数据准备

import tensorflow as tf
import tensorflow.examples.tutorials.mnist.input_data as input_datamnist = input_data.read_data_sets("MNIST_data/", one_hot=True)
C:\Users\admin\AppData\Local\conda\conda\envs\tensorflow\lib\site-packages\h5py\__init__.py:36: FutureWarning: Conversion of the second argument of issubdtype from `float` to `np.floating` is deprecated. In future, it will be treated as `np.float64 == np.dtype(float).type`.from ._conv import register_converters as _register_convertersWARNING:tensorflow:From <ipython-input-1-2ee827ab903d>:4: read_data_sets (from tensorflow.contrib.learn.python.learn.datasets.mnist) is deprecated and will be removed in a future version.
Instructions for updating:
Please use alternatives such as official/mnist/dataset.py from tensorflow/models.
WARNING:tensorflow:From C:\Users\admin\AppData\Local\conda\conda\envs\tensorflow\lib\site-packages\tensorflow\contrib\learn\python\learn\datasets\mnist.py:260: maybe_download (from tensorflow.contrib.learn.python.learn.datasets.base) is deprecated and will be removed in a future version.
Instructions for updating:
Please write your own downloading logic.
WARNING:tensorflow:From C:\Users\admin\AppData\Local\conda\conda\envs\tensorflow\lib\site-packages\tensorflow\contrib\learn\python\learn\datasets\mnist.py:262: extract_images (from tensorflow.contrib.learn.python.learn.datasets.mnist) is deprecated and will be removed in a future version.
Instructions for updating:
Please use tf.data to implement this functionality.
Extracting MNIST_data/train-images-idx3-ubyte.gz
WARNING:tensorflow:From C:\Users\admin\AppData\Local\conda\conda\envs\tensorflow\lib\site-packages\tensorflow\contrib\learn\python\learn\datasets\mnist.py:267: extract_labels (from tensorflow.contrib.learn.python.learn.datasets.mnist) is deprecated and will be removed in a future version.
Instructions for updating:
Please use tf.data to implement this functionality.
Extracting MNIST_data/train-labels-idx1-ubyte.gz
WARNING:tensorflow:From C:\Users\admin\AppData\Local\conda\conda\envs\tensorflow\lib\site-packages\tensorflow\contrib\learn\python\learn\datasets\mnist.py:110: dense_to_one_hot (from tensorflow.contrib.learn.python.learn.datasets.mnist) is deprecated and will be removed in a future version.
Instructions for updating:
Please use tf.one_hot on tensors.
WARNING:tensorflow:From C:\Users\admin\AppData\Local\conda\conda\envs\tensorflow\lib\site-packages\tensorflow\contrib\learn\python\learn\datasets\base.py:252: _internal_retry.<locals>.wrap.<locals>.wrapped_fn (from tensorflow.contrib.learn.python.learn.datasets.base) is deprecated and will be removed in a future version.
Instructions for updating:
Please use urllib or similar directly.
Successfully downloaded t10k-images-idx3-ubyte.gz 1648877 bytes.
Extracting MNIST_data/t10k-images-idx3-ubyte.gz
Successfully downloaded t10k-labels-idx1-ubyte.gz 4542 bytes.
Extracting MNIST_data/t10k-labels-idx1-ubyte.gz
WARNING:tensorflow:From C:\Users\admin\AppData\Local\conda\conda\envs\tensorflow\lib\site-packages\tensorflow\contrib\learn\python\learn\datasets\mnist.py:290: DataSet.__init__ (from tensorflow.contrib.learn.python.learn.datasets.mnist) is deprecated and will be removed in a future version.
Instructions for updating:
Please use alternatives such as official/mnist/dataset.py from tensorflow/models.
print('train images     :', mnist.train.images.shape,'labels:'           , mnist.train.labels.shape)
print('validation images:', mnist.validation.images.shape,' labels:'          , mnist.validation.labels.shape)
print('test images      :', mnist.test.images.shape,'labels:'           , mnist.test.labels.shape)
train images     : (55000, 784) labels: (55000, 10)
validation images: (5000, 784)  labels: (5000, 10)
test images      : (10000, 784) labels: (10000, 10)

建立模型

def layer(output_dim,input_dim,inputs, activation=None):#激活函数默认为NoneW = tf.Variable(tf.random_normal([input_dim, output_dim]))#以正态分布的随机数建立并且初始化权重Wb = tf.Variable(tf.random_normal([1, output_dim]))XWb = tf.matmul(inputs, W) + bif activation is None:outputs = XWbelse:outputs = activation(XWb)return outputs
建立输入层 x
x = tf.placeholder("float", [None, 784])
建立隐藏层h1
h1=layer(output_dim=1000,input_dim=784,inputs=x ,activation=tf.nn.relu)  
建立隐藏层h2
h2=layer(output_dim=1000,input_dim=1000,inputs=h1 ,activation=tf.nn.relu)  
建立输出层
y_predict=layer(output_dim=10,input_dim=1000,inputs=h2,activation=None)

定义训练方式

建立训练数据label真实值 placeholder
y_label = tf.placeholder("float", [None, 10])#训练数据的个数很多所以设置为None
定义loss function
# 深度学习模型的训练中使用交叉熵训练的效果比较好
loss_function = tf.reduce_mean(tf.nn.softmax_cross_entropy_with_logits_v2(logits=y_predict , labels=y_label))
选择optimizer
optimizer = tf.train.AdamOptimizer(learning_rate=0.001) \.minimize(loss_function)
#使用Loss_function来计算误差,并且按照误差更新模型权重与偏差,使误差最小化

定义评估模型的准确率

计算每一项数据是否正确预测
correct_prediction = tf.equal(tf.argmax(y_label  , 1),tf.argmax(y_predict, 1))#将one-hot encoding转化为1所在的位数,方便比较
将计算预测正确结果,加总平均
accuracy = tf.reduce_mean(tf.cast(correct_prediction, "float"))

开始训练

trainEpochs = 15#执行15个训练周期
batchSize = 100#每一批的数量为100
totalBatchs = int(mnist.train.num_examples/batchSize)#计算每一个训练周期应该执行的次数
epoch_list=[];accuracy_list=[];loss_list=[];
from time import time
startTime=time()
sess = tf.Session()
sess.run(tf.global_variables_initializer())
for epoch in range(trainEpochs):#执行15个训练周期#每个训练周期执行550批次训练for i in range(totalBatchs):batch_x, batch_y = mnist.train.next_batch(batchSize)#用该函数批次读取数据sess.run(optimizer,feed_dict={x: batch_x,y_label: batch_y})#使用验证数据计算准确率loss,acc = sess.run([loss_function,accuracy],feed_dict={x: mnist.validation.images, #验证数据的featuresy_label: mnist.validation.labels})#验证数据的labelepoch_list.append(epoch)loss_list.append(loss);accuracy_list.append(acc)    print("Train Epoch:", '%02d' % (epoch+1), \"Loss=","{:.9f}".format(loss)," Accuracy=",acc)duration =time()-startTime
print("Train Finished takes:",duration)        
Train Epoch: 01 Loss= 133.117172241  Accuracy= 0.9194
Train Epoch: 02 Loss= 88.949943542  Accuracy= 0.9392
Train Epoch: 03 Loss= 80.701606750  Accuracy= 0.9446
Train Epoch: 04 Loss= 72.045913696  Accuracy= 0.9506
Train Epoch: 05 Loss= 71.911483765  Accuracy= 0.9502
Train Epoch: 06 Loss= 63.642936707  Accuracy= 0.9558
Train Epoch: 07 Loss= 67.192626953  Accuracy= 0.9494
Train Epoch: 08 Loss= 55.959281921  Accuracy= 0.9618
Train Epoch: 09 Loss= 58.867351532  Accuracy= 0.9592
Train Epoch: 10 Loss= 61.904548645  Accuracy= 0.9612
Train Epoch: 11 Loss= 58.283069611  Accuracy= 0.9608
Train Epoch: 12 Loss= 54.332244873  Accuracy= 0.9646
Train Epoch: 13 Loss= 58.152175903  Accuracy= 0.9624
Train Epoch: 14 Loss= 51.552104950  Accuracy= 0.9688
Train Epoch: 15 Loss= 52.803482056  Accuracy= 0.9678
Train Finished takes: 545.0556836128235
画出误差执行结果
%matplotlib inline
import matplotlib.pyplot as plt
fig = plt.gcf()#获取当前的figure图
fig.set_size_inches(4,2)#设置图的大小
plt.plot(epoch_list, loss_list, label = 'loss')
plt.ylabel('loss')
plt.xlabel('epoch')
plt.legend(['loss'], loc='upper left')
<matplotlib.legend.Legend at 0x1edb8d4c240>

外链图片转存失败,源站可能有防盗链机制,建议将图片保存下来直接上传

画出准确率执行结果
plt.plot(epoch_list, accuracy_list,label="accuracy" )
fig = plt.gcf()
fig.set_size_inches(4,2)
plt.ylim(0.8,1)
plt.ylabel('accuracy')
plt.xlabel('epoch')
plt.legend()
plt.show()

外链图片转存失败,源站可能有防盗链机制,建议将图片保存下来直接上传

评估模型的准确率

print("Accuracy:", sess.run(accuracy,feed_dict={x: mnist.test.images, y_label: mnist.test.labels}))
Accuracy: 0.9643

进行预测

prediction_result=sess.run(tf.argmax(y_predict,1),feed_dict={x: mnist.test.images })
prediction_result[:10]
array([7, 2, 1, 0, 4, 1, 4, 9, 6, 9], dtype=int64)
import matplotlib.pyplot as plt
import numpy as np
def plot_images_labels_prediction(images,labels,prediction,idx,num=10):fig = plt.gcf()fig.set_size_inches(12, 14)if num>25: num=25 for i in range(0, num):ax=plt.subplot(5,5, 1+i)ax.imshow(np.reshape(images[idx],(28, 28)), cmap='binary')title= "label=" +str(np.argmax(labels[idx]))if len(prediction)>0:title+=",predict="+str(prediction[idx]) ax.set_title(title,fontsize=10) ax.set_xticks([]);ax.set_yticks([])        idx+=1 plt.show()
plot_images_labels_prediction(mnist.test.images,mnist.test.labels,prediction_result,0)

外链图片转存失败,源站可能有防盗链机制,建议将图片保存下来直接上传

y_predict_Onehot=sess.run(y_predict,feed_dict={x: mnist.test.images })
y_predict_Onehot[8]
array([-6185.544  , -5329.589  ,  1897.1707 , -3942.7764 ,   347.9809 ,5513.258  ,  6735.7153 , -5088.5273 ,   649.2062 ,    69.50408],dtype=float32)

找出预测错误

for i in range(400):if prediction_result[i]!=np.argmax(mnist.test.labels[i]):print("i="+str(i)+"   label=",np.argmax(mnist.test.labels[i]),"predict=",prediction_result[i])
i=8   label= 5 predict= 6
i=18   label= 3 predict= 8
i=149   label= 2 predict= 4
i=151   label= 9 predict= 8
i=233   label= 8 predict= 7
i=241   label= 9 predict= 8
i=245   label= 3 predict= 5
i=247   label= 4 predict= 2
i=259   label= 6 predict= 0
i=320   label= 9 predict= 1
i=340   label= 5 predict= 3
i=381   label= 3 predict= 7
i=386   label= 6 predict= 5
sess.close()
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