Tensorflow 简单数据拟合

一、查看原数据,打印查看

6234504-6d2da5a08e5276ed.png
源数据分布
import numpy as np
import matplotlib.pyplot as plt
files = np.load("/TensorFlow作业/homework.npz")
X = files['X']
label = files['d']
len = X.shape[0]
plt.scatter(X[:,0],X[:,1],c=label)
plt.show()

二、三层网络进行拟合

mport numpy as np
import matplotlib.pyplot as plt
files = np.load("/ensorFlow作业/homework.npz")
X = files['X']
label = files['d']
len = X.shape[0]

label_one_hot = []
for x1, x2 in X:
    if x1 > 0 and x2 > 0:
        label_one_hot.append([1, 0])
    elif x1 < 0 and x2 < 0:
        label_one_hot.append([1, 0])
    else:
        label_one_hot.append([0, 1])
label_one_hot = np.array(label_one_hot)

import tensorflow as tf
import tensorflow.contrib.slim as slim
x = tf.placeholder(tf.float32, [None, 2], name="input_x")
d = tf.placeholder(tf.float32, [None, 2], name="input_y")
# 对于sigmoid激活函数而言,效果可能并不理想
net = slim.fully_connected(x, 4, activation_fn=tf.nn.relu, 
                              scope='full1', reuse=False)
net = slim.fully_connected(net, 4, activation_fn=tf.nn.relu, 
                              scope='full4', reuse=False)
y = slim.fully_connected(net, 2, activation_fn=None, 
                              scope='full5', reuse=False)
# loss = tf.reduce_mean(tf.square(y-d))
loss = tf.reduce_mean(-d*tf.log(tf.nn.softmax(y)))
correct_prediction = tf.equal(tf.argmax(y, 1), tf.argmax(d, 1)) 
accuracy = tf.reduce_mean(tf.cast(correct_prediction, tf.float32))

optimizer = tf.train.GradientDescentOptimizer(0.01)
gradient = optimizer.compute_gradients(loss, var_list=tf.trainable_variables())
train_step = optimizer.apply_gradients(gradient)
sess = tf.Session()
sess.run(tf.global_variables_initializer())
l = []
a = []
for itr in range(20000):
    idx = np.random.randint(0, 2000, 20)
    inx = X[idx]
    ind = label_one_hot[idx]
    if itr%10==0:
        _accuracy = sess.run(accuracy,feed_dict={d:label_one_hot,x:X})
        print("迭代:{} 准确率:{}".format(itr,_accuracy))
        _loss = sess.run(loss,feed_dict={d:ind,x:inx})
        l.append(_loss)
        a.append(_accuracy)
    sess.run(train_step,feed_dict={d:ind,x:inx})

predict = sess.run(tf.argmax(y, 1),feed_dict={x:[[0.2,0.2]]})
print("[02,0,2] 预测值为 %d" % predict)
plt.plot(l)
plt.plot(a)
plt.show()

讨论

  1. 学习率


    6234504-8d22ea5b2e1f81b5.png
    GradientDescentOptimizer_0.01.png
6234504-51be8059689d5aec.png
GradientDescentOptimizer_0.1.png
  1. 损失函数,二范数 vs 交叉熵


    6234504-1e75bd57bb43e8a0.png
    交叉熵 learn_rate 0.1

    6234504-abe5d50dd9175a8a.png
    交叉熵 learning_rate 0.01

查看结果

二范数作为loss函数,学习率为0.1 时就可以达到较好的预测效果。

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转载自blog.csdn.net/weixin_33696822/article/details/87121678