tensorflow_神经网络逼近股票收盘均价

首先这个矩阵运算就很神奇,总是忘记,写在前头,像下面这个3×2的矩阵是可以直接加一个1×2的矩阵,分别加到每一行上

import tensorflow as tf
import numpy as np
import matplotlib.pyplot as plt
date = np.linspace(1,15,15)
endPrice = np.array([2511.90,2538.26,2510.68,2591.66,2732.98,2701.69,2701.29,2678.67,2726.50,2681.50,2739.17,2715.07,2823.58,2864.90,2919.68])
beginPrice = np.array([2438.71,2500.88,2534.95,2512.52,2594.04,2743.26,2697.47,2695.24,2678.23,2722.13,2674.93,2744.13,2717.46,2832.73,2877.40])
print(date)
plt.figure()
for i in range(0,15):
    #1 柱状图
    dataOne = np.zeros([2])
    dataOne[0] = i
    dataOne[1] = i
    priceOne = np.zeros([2])
    priceOne[0] = beginPrice[i]
    priceOne[1] = endPrice[i]
    if endPrice[i]>beginPrice[i]:
        plt.plot(dataOne,priceOne,'r',lw=8)
    else:
        plt.plot(dataOne,priceOne,'g',lw=8)
#plt.show()
#A(15×1)*w1(1×10)+b1(1×10)=B(15×10)  
#B(15×10)*w2(10×1)+b2(15×1)=C(15×1)
dateNormal = np.zeros([15,1])
priceNormal = np.zeros([15,1])
for i in range(0,15):
    dateNormal[i,0] = i/14.0
    priceNormal[i,0] = endPrice[i]/3000.0
x = tf.placeholder(tf.float32,[None,1])
y = tf.placeholder(tf.float32,[None,1])
# B
w1 = tf.Variable(tf.random_uniform([1,10],0,1))
b1 = tf.Variable(tf.zeros([1,10]))
wb1 = tf.matmul(x,w1)+b1
layer1 = tf.nn.relu(wb1) #激励函数
# C
w2 = tf.Variable(tf.random_uniform([10,1],0,1))
b2 = tf.Variable(tf.zeros([15,1]))
wb2 = tf.matmul(layer1,w2)+b2
layer2 =tf.nn.relu(wb2)
loss = tf.reduce_mean(tf.square(y-layer2))#y 真实值 layer2 计算
#train_step每次调整的步伐
#梯度下降法
train_step = tf.train.GradientDescentOptimizer(0.1).minimize(loss)
with tf.Session() as sess:
    sess.run(tf.global_variables_initializer())
    for i in range(0,10000):
        sess.run(train_step,feed_dict={x:dateNormal,y:priceNormal})
    #w1 w2 b1 b2 A + wb -->layer2
    pred = sess.run(layer2,feed_dict={x:dateNormal})
    predPrice = np.zeros([15,1])
    for i in range(0,15):
        predPrice[i,0] = (pred*3000)[i,0]
    plt.plot(date,predPrice,'b',lw = 1)
plt.show()

 

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转载自blog.csdn.net/natures66/article/details/91914358
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