• tensorflow入门(1):构造线性回归模型


    今天让我们一起来学习如何用TF实现线性回归模型。所谓线性回归模型就是y = W * x + b的形式的表达式拟合的模型。

    我们先假设一条直线为 y = 0.1x + 0.3,即W = 0.1,b = 0.3,然后利用随机数在这条直线附近产生1000个随机点,然后利用tensorflow构造的线性模型去学习,最后对比模型所得的W和b与真实值的差距即可。

    (某天在浏览Github的时候,发现了一个好东西,Github上有一个比较好的有关tensorflow的Demo合集,有注释有源代码非常适合新手入门。)

    import numpy as np     #numpy库可用来存储和处理大型矩阵
    import tensorflow as tf
    import matplotlib.pyplot as plt    #主要用于画图

    #产生1000个随机点
    num_points = 1000

    vectors_set = []
    for i in range(num_points):
    #利用random的内置函数产生1000个符合 均值为0,标准差为0.55的正态分布
      x1 = np.random.normal(0.0, 0.55)
      y1 = x1 * 0.1 + 0.3 + np.random.normal(0.0, 0.03)
      vectors_set.append([x1,y1])

    x_data = [v[0] for v in vectors_set]
    y_data = [v[1] for v in vectors_set]

    plt.scatter(x_data, y_data, c = 'r')
    plt.show()


    #生成1维的W矩阵,取值为【-1,1】之间的随机数
    W = tf.Variable(tf.random_uniform([1], -1.0, 1.0), name = 'W')
    #生成1维的b矩阵,初始值为0
    b = tf.Variable(tf.zeros([1]), name = 'b')
    #经过计算得出预估值Y
    y = W * x_data + b

    #以预估值Y和实际值Y_data之间的均方误差作为损失
    loss = tf.reduce_mean(tf.square(y - y_data), name = 'loss')

    #采用梯度下降法进行优化参数(梯度下降原理详情见另一篇博客)
    #optimizer = tf.train.GradientDescentOptimizera(0.5).minimize(loss)
    optimizer = tf.train.GradientDescentOptimizer(0.5)

    #训练的过程就是最小化这个误差值
    train = optimizer.minimize(loss, name = 'train')

    sess = tf.Session()

    init = tf.global_variables_initializer()
    sess.run(init)

    #打印初始化的W和b的值
    print('W = ', sess.run(W), 'b = ', sess.run(b), "loss = ", sess.run(loss))
    #因为数据规模不大且符合正态分布,所以执行20次训练就能达到一定效果
    for step in range(20):
      sess.run(train)
    #输出训练后的W和B
      print('W = ', sess.run(W), 'b = ', sess.run(b), "loss = ", sess.run(loss))

    实验结果如下:

    1.1000个散点图

    2.预测出W、b以及loss的值

    W = [0.40727448] b = [0.] loss = 0.12212546
    W = [0.30741683] b = [0.30278787] loss = 0.014318982
    W = [0.24240384] b = [0.3016729] loss = 0.0071945195
    W = [0.19786316] b = [0.30094698] loss = 0.0038506198
    W = [0.16734858] b = [0.30044967] loss = 0.0022811447
    W = [0.1464432] b = [0.30010894] loss = 0.001544504
    W = [0.13212104] b = [0.29987553] loss = 0.0011987583
    W = [0.122309] b = [0.2997156] loss = 0.0010364805
    W = [0.11558682] b = [0.29960606] loss = 0.00096031476
    W = [0.11098149] b = [0.29953098] loss = 0.0009245659
    W = [0.1078264] b = [0.29947957] loss = 0.00090778706
    W = [0.10566486] b = [0.29944435] loss = 0.00089991186
    W = [0.10418401] b = [0.2994202] loss = 0.0008962157
    W = [0.10316949] b = [0.29940367] loss = 0.0008944806
    W = [0.10247444] b = [0.29939234] loss = 0.00089366647
    W = [0.10199826] b = [0.2993846] loss = 0.00089328433
    W = [0.10167204] b = [0.29937926] loss = 0.0008931049
    W = [0.10144854] b = [0.29937562] loss = 0.00089302065
    W = [0.10129543] b = [0.29937312] loss = 0.00089298113
    W = [0.10119054] b = [0.29937142] loss = 0.0008929627
    W = [0.10111867] b = [0.29937026] loss = 0.000892954

    根据实验结果可以看出第20次预测出的W和b值基本符合我们之前假设直线的值

  • 相关阅读:
    读javascript高级程序设计08-引用类型之Global、Math、String
    读javascript高级程序设计07-引用类型、Object、Array
    读javascript高级程序设计06-面向对象之继承
    读javascript高级程序设计05-面向对象之创建对象
    读javascript高级程序设计04-canvas
    读javascript高级程序设计03-函数表达式、闭包、私有变量
    读javascript高级程序设计02-变量作用域
    C#将Word转换成PDF方法总结(基于Office和WPS两种方案)
    【转】 C#中Finally的一个不太常见的用法
    一看就懂的ReactJs入门教程-精华版
  • 原文地址:https://www.cnblogs.com/XDU-Lakers/p/10468152.html
Copyright © 2020-2023  润新知